Coverage Report

Created: 2026-06-07 07:20

next uncovered line (L), next uncovered region (R), next uncovered branch (B)
/src/libjxl/lib/jxl/modular/encoding/context_predict.h
Line
Count
Source
1
// Copyright (c) the JPEG XL Project Authors. All rights reserved.
2
//
3
// Use of this source code is governed by a BSD-style
4
// license that can be found in the LICENSE file.
5
6
#ifndef LIB_JXL_MODULAR_ENCODING_CONTEXT_PREDICT_H_
7
#define LIB_JXL_MODULAR_ENCODING_CONTEXT_PREDICT_H_
8
9
#include <algorithm>
10
#include <array>
11
#include <cmath>
12
#include <cstddef>
13
#include <cstdint>
14
#include <vector>
15
16
#include "lib/jxl/base/bits.h"
17
#include "lib/jxl/base/compiler_specific.h"
18
#include "lib/jxl/base/status.h"
19
#include "lib/jxl/field_encodings.h"
20
#include "lib/jxl/fields.h"
21
#include "lib/jxl/image_ops.h"
22
#include "lib/jxl/modular/modular_image.h"
23
#include "lib/jxl/modular/options.h"
24
25
namespace jxl {
26
27
namespace weighted {
28
constexpr static size_t kNumPredictors = 4;
29
constexpr static int64_t kPredExtraBits = 3;
30
constexpr static int64_t kPredictionRound = ((1 << kPredExtraBits) >> 1) - 1;
31
constexpr static size_t kNumProperties = 1;
32
33
struct Header : public Fields {
34
  JXL_FIELDS_NAME(WeightedPredictorHeader)
35
  // TODO(janwas): move to cc file, avoid including fields.h.
36
208k
  Header() { Bundle::Init(this); }
37
38
328k
  Status VisitFields(Visitor *JXL_RESTRICT visitor) override {
39
328k
    if (visitor->AllDefault(*this, &all_default)) {
40
      // Overwrite all serialized fields, but not any nonserialized_*.
41
58.4k
      visitor->SetDefault(this);
42
58.4k
      return true;
43
58.4k
    }
44
1.89M
    auto visit_p = [visitor](pixel_type val, pixel_type *p) -> Status {
45
1.89M
      uint32_t up = *p;
46
1.89M
      JXL_QUIET_RETURN_IF_ERROR(visitor->Bits(5, val, &up));
47
1.89M
      *p = up;
48
1.89M
      return true;
49
1.89M
    };
50
270k
    JXL_QUIET_RETURN_IF_ERROR(visit_p(16, &p1C));
51
270k
    JXL_QUIET_RETURN_IF_ERROR(visit_p(10, &p2C));
52
270k
    JXL_QUIET_RETURN_IF_ERROR(visit_p(7, &p3Ca));
53
270k
    JXL_QUIET_RETURN_IF_ERROR(visit_p(7, &p3Cb));
54
270k
    JXL_QUIET_RETURN_IF_ERROR(visit_p(7, &p3Cc));
55
270k
    JXL_QUIET_RETURN_IF_ERROR(visit_p(0, &p3Cd));
56
270k
    JXL_QUIET_RETURN_IF_ERROR(visit_p(0, &p3Ce));
57
270k
    JXL_QUIET_RETURN_IF_ERROR(visitor->Bits(4, 0xd, &w[0]));
58
270k
    JXL_QUIET_RETURN_IF_ERROR(visitor->Bits(4, 0xc, &w[1]));
59
270k
    JXL_QUIET_RETURN_IF_ERROR(visitor->Bits(4, 0xc, &w[2]));
60
270k
    JXL_QUIET_RETURN_IF_ERROR(visitor->Bits(4, 0xc, &w[3]));
61
270k
    return true;
62
270k
  }
63
64
  bool all_default;
65
  pixel_type p1C = 0, p2C = 0, p3Ca = 0, p3Cb = 0, p3Cc = 0, p3Cd = 0, p3Ce = 0;
66
  uint32_t w[kNumPredictors] = {};
67
};
68
69
struct State {
70
  pixel_type_w prediction[kNumPredictors] = {};
71
  pixel_type_w pred = 0;  // *before* removing the added bits.
72
  std::vector<uint32_t> pred_errors[kNumPredictors];
73
  std::vector<int32_t> error;
74
  const Header &header;
75
76
  // Allows to approximate division by a number from 1 to 64.
77
  //  for (int i = 0; i < 64; i++) divlookup[i] = (1 << 24) / (i + 1);
78
79
  const uint32_t divlookup[64] = {
80
      16777216, 8388608, 5592405, 4194304, 3355443, 2796202, 2396745, 2097152,
81
      1864135,  1677721, 1525201, 1398101, 1290555, 1198372, 1118481, 1048576,
82
      986895,   932067,  883011,  838860,  798915,  762600,  729444,  699050,
83
      671088,   645277,  621378,  599186,  578524,  559240,  541200,  524288,
84
      508400,   493447,  479349,  466033,  453438,  441505,  430185,  419430,
85
      409200,   399457,  390167,  381300,  372827,  364722,  356962,  349525,
86
      342392,   335544,  328965,  322638,  316551,  310689,  305040,  299593,
87
      294337,   289262,  284359,  279620,  275036,  270600,  266305,  262144};
88
89
1.55G
  constexpr static pixel_type_w AddBits(pixel_type_w x) {
90
1.55G
    return static_cast<uint64_t>(x) << kPredExtraBits;
91
1.55G
  }
92
93
38.9k
  State(const Header &header, size_t xsize, size_t ysize) : header(header) {
94
    // Extra margin to avoid out-of-bounds writes.
95
    // All have space for two rows of data.
96
155k
    for (auto &pred_error : pred_errors) {
97
155k
      pred_error.resize((xsize + 2) * 2);
98
155k
    }
99
38.9k
    error.resize((xsize + 2) * 2);
100
38.9k
  }
101
102
  // Approximates 4+(maxweight<<24)/(x+1), avoiding division
103
1.02G
  JXL_INLINE uint32_t ErrorWeight(uint64_t x, uint32_t maxweight) const {
104
1.02G
    int shift = static_cast<int>(FloorLog2Nonzero(x + 1)) - 5;
105
1.02G
    if (shift < 0) shift = 0;
106
1.02G
    return 4 + ((maxweight * divlookup[x >> shift]) >> shift);
107
1.02G
  }
108
109
  // Approximates the weighted average of the input values with the given
110
  // weights, avoiding division. Weights must sum to at least 16.
111
  JXL_INLINE pixel_type_w
112
  WeightedAverage(const pixel_type_w *JXL_RESTRICT p,
113
255M
                  std::array<uint32_t, kNumPredictors> w) const {
114
255M
    uint32_t weight_sum = 0;
115
1.27G
    for (size_t i = 0; i < kNumPredictors; i++) {
116
1.02G
      weight_sum += w[i];
117
1.02G
    }
118
255M
    JXL_DASSERT(weight_sum > 15);
119
255M
    uint32_t log_weight = FloorLog2Nonzero(weight_sum);  // at least 4.
120
255M
    weight_sum = 0;
121
1.27G
    for (size_t i = 0; i < kNumPredictors; i++) {
122
1.02G
      w[i] >>= log_weight - 4;
123
1.02G
      weight_sum += w[i];
124
1.02G
    }
125
    // for rounding.
126
255M
    pixel_type_w sum = (weight_sum >> 1) - 1;
127
1.27G
    for (size_t i = 0; i < kNumPredictors; i++) {
128
1.02G
      sum += p[i] * w[i];
129
1.02G
    }
130
255M
    return (sum * divlookup[weight_sum - 1]) >> 24;
131
255M
  }
132
133
  template <bool compute_properties>
134
  JXL_INLINE pixel_type_w Predict(size_t x, size_t y, size_t xsize,
135
                                  pixel_type_w N, pixel_type_w W,
136
                                  pixel_type_w NE, pixel_type_w NW,
137
                                  pixel_type_w NN, Properties *properties,
138
255M
                                  size_t offset) {
139
255M
    size_t cur_row = y & 1 ? 0 : (xsize + 2);
140
255M
    size_t prev_row = y & 1 ? (xsize + 2) : 0;
141
255M
    size_t pos_N = prev_row + x;
142
255M
    size_t pos_NE = x < xsize - 1 ? pos_N + 1 : pos_N;
143
255M
    size_t pos_NW = x > 0 ? pos_N - 1 : pos_N;
144
255M
    std::array<uint32_t, kNumPredictors> weights;
145
1.27G
    for (size_t i = 0; i < kNumPredictors; i++) {
146
      // pred_errors[pos_N] also contains the error of pixel W.
147
      // pred_errors[pos_NW] also contains the error of pixel WW.
148
1.02G
      weights[i] = pred_errors[i][pos_N] + pred_errors[i][pos_NE] +
149
1.02G
                   pred_errors[i][pos_NW];
150
1.02G
      weights[i] = ErrorWeight(weights[i], header.w[i]);
151
1.02G
    }
152
153
255M
    N = AddBits(N);
154
255M
    W = AddBits(W);
155
255M
    NE = AddBits(NE);
156
255M
    NW = AddBits(NW);
157
255M
    NN = AddBits(NN);
158
159
255M
    pixel_type_w teW = x == 0 ? 0 : error[cur_row + x - 1];
160
255M
    pixel_type_w teN = error[pos_N];
161
255M
    pixel_type_w teNW = error[pos_NW];
162
255M
    pixel_type_w sumWN = teN + teW;
163
255M
    pixel_type_w teNE = error[pos_NE];
164
165
255M
    if (compute_properties) {
166
232M
      pixel_type_w p = teW;
167
232M
      if (std::abs(teN) > std::abs(p)) p = teN;
168
232M
      if (std::abs(teNW) > std::abs(p)) p = teNW;
169
232M
      if (std::abs(teNE) > std::abs(p)) p = teNE;
170
232M
      (*properties)[offset++] = p;
171
232M
    }
172
173
255M
    prediction[0] = W + NE - N;
174
255M
    prediction[1] = N - (((sumWN + teNE) * header.p1C) >> 5);
175
255M
    prediction[2] = W - (((sumWN + teNW) * header.p2C) >> 5);
176
255M
    prediction[3] =
177
255M
        N - ((teNW * header.p3Ca + teN * header.p3Cb + teNE * header.p3Cc +
178
255M
              (NN - N) * header.p3Cd + (NW - W) * header.p3Ce) >>
179
255M
             5);
180
181
255M
    pred = WeightedAverage(prediction, weights);
182
183
    // If all three have the same sign, skip clamping.
184
255M
    if (((teN ^ teW) | (teN ^ teNW)) > 0) {
185
58.8M
      return (pred + kPredictionRound) >> kPredExtraBits;
186
58.8M
    }
187
188
    // Otherwise, clamp to min/max of neighbouring pixels (just W, NE, N).
189
196M
    pixel_type_w mx = std::max(W, std::max(NE, N));
190
196M
    pixel_type_w mn = std::min(W, std::min(NE, N));
191
196M
    pred = std::max(mn, std::min(mx, pred));
192
196M
    return (pred + kPredictionRound) >> kPredExtraBits;
193
255M
  }
long jxl::weighted::State::Predict<false>(unsigned long, unsigned long, unsigned long, long, long, long, long, long, std::__1::vector<int, std::__1::allocator<int> >*, unsigned long)
Line
Count
Source
138
22.9M
                                  size_t offset) {
139
22.9M
    size_t cur_row = y & 1 ? 0 : (xsize + 2);
140
22.9M
    size_t prev_row = y & 1 ? (xsize + 2) : 0;
141
22.9M
    size_t pos_N = prev_row + x;
142
22.9M
    size_t pos_NE = x < xsize - 1 ? pos_N + 1 : pos_N;
143
22.9M
    size_t pos_NW = x > 0 ? pos_N - 1 : pos_N;
144
22.9M
    std::array<uint32_t, kNumPredictors> weights;
145
114M
    for (size_t i = 0; i < kNumPredictors; i++) {
146
      // pred_errors[pos_N] also contains the error of pixel W.
147
      // pred_errors[pos_NW] also contains the error of pixel WW.
148
91.7M
      weights[i] = pred_errors[i][pos_N] + pred_errors[i][pos_NE] +
149
91.7M
                   pred_errors[i][pos_NW];
150
91.7M
      weights[i] = ErrorWeight(weights[i], header.w[i]);
151
91.7M
    }
152
153
22.9M
    N = AddBits(N);
154
22.9M
    W = AddBits(W);
155
22.9M
    NE = AddBits(NE);
156
22.9M
    NW = AddBits(NW);
157
22.9M
    NN = AddBits(NN);
158
159
22.9M
    pixel_type_w teW = x == 0 ? 0 : error[cur_row + x - 1];
160
22.9M
    pixel_type_w teN = error[pos_N];
161
22.9M
    pixel_type_w teNW = error[pos_NW];
162
22.9M
    pixel_type_w sumWN = teN + teW;
163
22.9M
    pixel_type_w teNE = error[pos_NE];
164
165
22.9M
    if (compute_properties) {
166
0
      pixel_type_w p = teW;
167
0
      if (std::abs(teN) > std::abs(p)) p = teN;
168
0
      if (std::abs(teNW) > std::abs(p)) p = teNW;
169
0
      if (std::abs(teNE) > std::abs(p)) p = teNE;
170
0
      (*properties)[offset++] = p;
171
0
    }
172
173
22.9M
    prediction[0] = W + NE - N;
174
22.9M
    prediction[1] = N - (((sumWN + teNE) * header.p1C) >> 5);
175
22.9M
    prediction[2] = W - (((sumWN + teNW) * header.p2C) >> 5);
176
22.9M
    prediction[3] =
177
22.9M
        N - ((teNW * header.p3Ca + teN * header.p3Cb + teNE * header.p3Cc +
178
22.9M
              (NN - N) * header.p3Cd + (NW - W) * header.p3Ce) >>
179
22.9M
             5);
180
181
22.9M
    pred = WeightedAverage(prediction, weights);
182
183
    // If all three have the same sign, skip clamping.
184
22.9M
    if (((teN ^ teW) | (teN ^ teNW)) > 0) {
185
3.69M
      return (pred + kPredictionRound) >> kPredExtraBits;
186
3.69M
    }
187
188
    // Otherwise, clamp to min/max of neighbouring pixels (just W, NE, N).
189
19.2M
    pixel_type_w mx = std::max(W, std::max(NE, N));
190
19.2M
    pixel_type_w mn = std::min(W, std::min(NE, N));
191
19.2M
    pred = std::max(mn, std::min(mx, pred));
192
19.2M
    return (pred + kPredictionRound) >> kPredExtraBits;
193
22.9M
  }
long jxl::weighted::State::Predict<true>(unsigned long, unsigned long, unsigned long, long, long, long, long, long, std::__1::vector<int, std::__1::allocator<int> >*, unsigned long)
Line
Count
Source
138
232M
                                  size_t offset) {
139
232M
    size_t cur_row = y & 1 ? 0 : (xsize + 2);
140
232M
    size_t prev_row = y & 1 ? (xsize + 2) : 0;
141
232M
    size_t pos_N = prev_row + x;
142
232M
    size_t pos_NE = x < xsize - 1 ? pos_N + 1 : pos_N;
143
232M
    size_t pos_NW = x > 0 ? pos_N - 1 : pos_N;
144
232M
    std::array<uint32_t, kNumPredictors> weights;
145
1.16G
    for (size_t i = 0; i < kNumPredictors; i++) {
146
      // pred_errors[pos_N] also contains the error of pixel W.
147
      // pred_errors[pos_NW] also contains the error of pixel WW.
148
928M
      weights[i] = pred_errors[i][pos_N] + pred_errors[i][pos_NE] +
149
928M
                   pred_errors[i][pos_NW];
150
928M
      weights[i] = ErrorWeight(weights[i], header.w[i]);
151
928M
    }
152
153
232M
    N = AddBits(N);
154
232M
    W = AddBits(W);
155
232M
    NE = AddBits(NE);
156
232M
    NW = AddBits(NW);
157
232M
    NN = AddBits(NN);
158
159
232M
    pixel_type_w teW = x == 0 ? 0 : error[cur_row + x - 1];
160
232M
    pixel_type_w teN = error[pos_N];
161
232M
    pixel_type_w teNW = error[pos_NW];
162
232M
    pixel_type_w sumWN = teN + teW;
163
232M
    pixel_type_w teNE = error[pos_NE];
164
165
232M
    if (compute_properties) {
166
232M
      pixel_type_w p = teW;
167
232M
      if (std::abs(teN) > std::abs(p)) p = teN;
168
232M
      if (std::abs(teNW) > std::abs(p)) p = teNW;
169
232M
      if (std::abs(teNE) > std::abs(p)) p = teNE;
170
232M
      (*properties)[offset++] = p;
171
232M
    }
172
173
232M
    prediction[0] = W + NE - N;
174
232M
    prediction[1] = N - (((sumWN + teNE) * header.p1C) >> 5);
175
232M
    prediction[2] = W - (((sumWN + teNW) * header.p2C) >> 5);
176
232M
    prediction[3] =
177
232M
        N - ((teNW * header.p3Ca + teN * header.p3Cb + teNE * header.p3Cc +
178
232M
              (NN - N) * header.p3Cd + (NW - W) * header.p3Ce) >>
179
232M
             5);
180
181
232M
    pred = WeightedAverage(prediction, weights);
182
183
    // If all three have the same sign, skip clamping.
184
232M
    if (((teN ^ teW) | (teN ^ teNW)) > 0) {
185
55.1M
      return (pred + kPredictionRound) >> kPredExtraBits;
186
55.1M
    }
187
188
    // Otherwise, clamp to min/max of neighbouring pixels (just W, NE, N).
189
177M
    pixel_type_w mx = std::max(W, std::max(NE, N));
190
177M
    pixel_type_w mn = std::min(W, std::min(NE, N));
191
177M
    pred = std::max(mn, std::min(mx, pred));
192
177M
    return (pred + kPredictionRound) >> kPredExtraBits;
193
232M
  }
194
195
  JXL_INLINE void UpdateErrors(pixel_type_w val, size_t x, size_t y,
196
276M
                               size_t xsize) {
197
276M
    size_t cur_row = y & 1 ? 0 : (xsize + 2);
198
276M
    size_t prev_row = y & 1 ? (xsize + 2) : 0;
199
276M
    val = AddBits(val);
200
276M
    error[cur_row + x] = pred - val;
201
1.38G
    for (size_t i = 0; i < kNumPredictors; i++) {
202
1.10G
      pixel_type_w err =
203
1.10G
          (std::abs(prediction[i] - val) + kPredictionRound) >> kPredExtraBits;
204
      // For predicting in the next row.
205
1.10G
      pred_errors[i][cur_row + x] = err;
206
      // Add the error on this pixel to the error on the NE pixel. This has the
207
      // effect of adding the error on this pixel to the E and EE pixels.
208
1.10G
      pred_errors[i][prev_row + x + 1] += err;
209
1.10G
    }
210
276M
  }
211
};
212
213
// Encoder helper function to set the parameters to some presets.
214
2.87k
inline void PredictorMode(int i, Header *header) {
215
2.87k
  switch (i) {
216
2.87k
    case 0:
217
      // ~ lossless16 predictor
218
2.87k
      header->w[0] = 0xd;
219
2.87k
      header->w[1] = 0xc;
220
2.87k
      header->w[2] = 0xc;
221
2.87k
      header->w[3] = 0xc;
222
2.87k
      header->p1C = 16;
223
2.87k
      header->p2C = 10;
224
2.87k
      header->p3Ca = 7;
225
2.87k
      header->p3Cb = 7;
226
2.87k
      header->p3Cc = 7;
227
2.87k
      header->p3Cd = 0;
228
2.87k
      header->p3Ce = 0;
229
2.87k
      break;
230
0
    case 1:
231
      // ~ default lossless8 predictor
232
0
      header->w[0] = 0xd;
233
0
      header->w[1] = 0xc;
234
0
      header->w[2] = 0xc;
235
0
      header->w[3] = 0xb;
236
0
      header->p1C = 8;
237
0
      header->p2C = 8;
238
0
      header->p3Ca = 4;
239
0
      header->p3Cb = 0;
240
0
      header->p3Cc = 3;
241
0
      header->p3Cd = 23;
242
0
      header->p3Ce = 2;
243
0
      break;
244
0
    case 2:
245
      // ~ west lossless8 predictor
246
0
      header->w[0] = 0xd;
247
0
      header->w[1] = 0xc;
248
0
      header->w[2] = 0xd;
249
0
      header->w[3] = 0xc;
250
0
      header->p1C = 10;
251
0
      header->p2C = 9;
252
0
      header->p3Ca = 7;
253
0
      header->p3Cb = 0;
254
0
      header->p3Cc = 0;
255
0
      header->p3Cd = 16;
256
0
      header->p3Ce = 9;
257
0
      break;
258
0
    case 3:
259
      // ~ north lossless8 predictor
260
0
      header->w[0] = 0xd;
261
0
      header->w[1] = 0xd;
262
0
      header->w[2] = 0xc;
263
0
      header->w[3] = 0xc;
264
0
      header->p1C = 16;
265
0
      header->p2C = 8;
266
0
      header->p3Ca = 0;
267
0
      header->p3Cb = 16;
268
0
      header->p3Cc = 0;
269
0
      header->p3Cd = 23;
270
0
      header->p3Ce = 0;
271
0
      break;
272
0
    case 4:
273
0
    default:
274
      // something else, because why not
275
0
      header->w[0] = 0xd;
276
0
      header->w[1] = 0xc;
277
0
      header->w[2] = 0xc;
278
0
      header->w[3] = 0xc;
279
0
      header->p1C = 10;
280
0
      header->p2C = 10;
281
0
      header->p3Ca = 5;
282
0
      header->p3Cb = 5;
283
0
      header->p3Cc = 5;
284
0
      header->p3Cd = 12;
285
0
      header->p3Ce = 4;
286
0
      break;
287
2.87k
  }
288
2.87k
}
289
}  // namespace weighted
290
291
// Returns true if the (meta)predictor makes use of the weighted predictor.
292
14.2k
inline bool PredictorHasWeighted(Predictor predictor) {
293
  // Use a non-defaulted switch to generate a warning if a case is missing.
294
14.2k
  switch (predictor) {
295
0
    case Predictor::Zero:
296
0
    case Predictor::Left:
297
0
    case Predictor::Top:
298
0
    case Predictor::Average0:
299
0
    case Predictor::Select:
300
11.3k
    case Predictor::Gradient:
301
11.3k
      return false;
302
2.87k
    case Predictor::Weighted:
303
2.87k
      return true;
304
0
    case Predictor::TopRight:
305
0
    case Predictor::TopLeft:
306
0
    case Predictor::LeftLeft:
307
0
    case Predictor::Average1:
308
0
    case Predictor::Average2:
309
0
    case Predictor::Average3:
310
0
    case Predictor::Average4:
311
0
      return false;
312
0
    case Predictor::Best:
313
0
    case Predictor::Variable:
314
0
      return true;
315
14.2k
  }
316
317
0
  return false;
318
14.2k
}
319
320
// Stores a node and its two children at the same time. This significantly
321
// reduces the number of branches needed during decoding.
322
struct FlatDecisionNode {
323
  // Property + splitval of the top node.
324
  int32_t property0;  // -1 if leaf.
325
  union {
326
    PropertyVal splitval0;
327
    Predictor predictor;
328
  };
329
  // Property+splitval of the two child nodes.
330
  union {
331
    PropertyVal splitvals[2];
332
    int32_t multiplier;
333
  };
334
  uint32_t childID;  // childID is ctx id if leaf.
335
  union {
336
    int16_t properties[2];
337
    int32_t predictor_offset;
338
  };
339
};
340
using FlatTree = std::vector<FlatDecisionNode>;
341
342
class MATreeLookup {
343
 public:
344
58.4k
  explicit MATreeLookup(const FlatTree &tree) : nodes_(tree) {}
345
  struct LookupResult {
346
    uint32_t context;
347
    Predictor predictor;
348
    int32_t offset;
349
    int32_t multiplier;
350
  };
351
178M
  JXL_INLINE LookupResult Lookup(const Properties &properties) const {
352
178M
    uint32_t pos = 0;
353
320M
    while (true) {
354
320M
#define TRAVERSE_THE_TREE                                                \
355
524M
  {                                                                      \
356
524M
    const FlatDecisionNode &node = nodes_[pos];                          \
357
524M
    if (node.property0 < 0) {                                            \
358
178M
      return {node.childID, node.predictor, node.predictor_offset,       \
359
178M
              node.multiplier};                                          \
360
178M
    }                                                                    \
361
524M
    bool p0 = properties[node.property0] <= node.splitval0;              \
362
345M
    uint32_t off0 = properties[node.properties[0]] <= node.splitvals[0]; \
363
345M
    uint32_t off1 =                                                      \
364
345M
        2 | int{properties[node.properties[1]] <= node.splitvals[1]};    \
365
345M
    pos = node.childID + (p0 ? off1 : off0);                             \
366
345M
  }
367
368
320M
      TRAVERSE_THE_TREE;
369
204M
      TRAVERSE_THE_TREE;
370
141M
    }
371
178M
  }
372
373
 private:
374
  const FlatTree &nodes_;
375
};
376
377
static constexpr size_t kExtraPropsPerChannel = 4;
378
static constexpr size_t kNumNonrefProperties =
379
    kNumStaticProperties + 13 + weighted::kNumProperties;
380
381
constexpr size_t kWPProp = kNumNonrefProperties - weighted::kNumProperties;
382
constexpr size_t kGradientProp = 9;
383
384
// Clamps gradient to the min/max of n, w (and l, implicitly).
385
static JXL_INLINE int32_t ClampedGradient(const int32_t n, const int32_t w,
386
248M
                                          const int32_t l) {
387
248M
  const int32_t m = std::min(n, w);
388
248M
  const int32_t M = std::max(n, w);
389
  // The end result of this operation doesn't overflow or underflow if the
390
  // result is between m and M, but the intermediate value may overflow, so we
391
  // do the intermediate operations in uint32_t and check later if we had an
392
  // overflow or underflow condition comparing m, M and l directly.
393
  // grad = M + m - l = n + w - l
394
248M
  const int32_t grad =
395
248M
      static_cast<int32_t>(static_cast<uint32_t>(n) + static_cast<uint32_t>(w) -
396
248M
                           static_cast<uint32_t>(l));
397
  // We use two sets of ternary operators to force the evaluation of them in
398
  // any case, allowing the compiler to avoid branches and use cmovl/cmovg in
399
  // x86.
400
248M
  const int32_t grad_clamp_M = (l < m) ? M : grad;
401
248M
  return (l > M) ? m : grad_clamp_M;
402
248M
}
Unexecuted instantiation: enc_frame.cc:jxl::ClampedGradient(int, int, int)
enc_modular.cc:jxl::ClampedGradient(int, int, int)
Line
Count
Source
386
8.59M
                                          const int32_t l) {
387
8.59M
  const int32_t m = std::min(n, w);
388
8.59M
  const int32_t M = std::max(n, w);
389
  // The end result of this operation doesn't overflow or underflow if the
390
  // result is between m and M, but the intermediate value may overflow, so we
391
  // do the intermediate operations in uint32_t and check later if we had an
392
  // overflow or underflow condition comparing m, M and l directly.
393
  // grad = M + m - l = n + w - l
394
8.59M
  const int32_t grad =
395
8.59M
      static_cast<int32_t>(static_cast<uint32_t>(n) + static_cast<uint32_t>(w) -
396
8.59M
                           static_cast<uint32_t>(l));
397
  // We use two sets of ternary operators to force the evaluation of them in
398
  // any case, allowing the compiler to avoid branches and use cmovl/cmovg in
399
  // x86.
400
8.59M
  const int32_t grad_clamp_M = (l < m) ? M : grad;
401
8.59M
  return (l > M) ? m : grad_clamp_M;
402
8.59M
}
Unexecuted instantiation: enc_patch_dictionary.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: enc_quant_weights.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: enc_heuristics.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: enc_adaptive_quantization.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: enc_cache.cc:jxl::ClampedGradient(int, int, int)
enc_encoding.cc:jxl::ClampedGradient(int, int, int)
Line
Count
Source
386
223M
                                          const int32_t l) {
387
223M
  const int32_t m = std::min(n, w);
388
223M
  const int32_t M = std::max(n, w);
389
  // The end result of this operation doesn't overflow or underflow if the
390
  // result is between m and M, but the intermediate value may overflow, so we
391
  // do the intermediate operations in uint32_t and check later if we had an
392
  // overflow or underflow condition comparing m, M and l directly.
393
  // grad = M + m - l = n + w - l
394
223M
  const int32_t grad =
395
223M
      static_cast<int32_t>(static_cast<uint32_t>(n) + static_cast<uint32_t>(w) -
396
223M
                           static_cast<uint32_t>(l));
397
  // We use two sets of ternary operators to force the evaluation of them in
398
  // any case, allowing the compiler to avoid branches and use cmovl/cmovg in
399
  // x86.
400
223M
  const int32_t grad_clamp_M = (l < m) ? M : grad;
401
223M
  return (l > M) ? m : grad_clamp_M;
402
223M
}
Unexecuted instantiation: enc_ma.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: enc_rct.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: enc_transform.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: enc_palette.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: coeff_order.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: dec_frame.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: dec_modular.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: decode.cc:jxl::ClampedGradient(int, int, int)
encoding.cc:jxl::ClampedGradient(int, int, int)
Line
Count
Source
386
16.9M
                                          const int32_t l) {
387
16.9M
  const int32_t m = std::min(n, w);
388
16.9M
  const int32_t M = std::max(n, w);
389
  // The end result of this operation doesn't overflow or underflow if the
390
  // result is between m and M, but the intermediate value may overflow, so we
391
  // do the intermediate operations in uint32_t and check later if we had an
392
  // overflow or underflow condition comparing m, M and l directly.
393
  // grad = M + m - l = n + w - l
394
16.9M
  const int32_t grad =
395
16.9M
      static_cast<int32_t>(static_cast<uint32_t>(n) + static_cast<uint32_t>(w) -
396
16.9M
                           static_cast<uint32_t>(l));
397
  // We use two sets of ternary operators to force the evaluation of them in
398
  // any case, allowing the compiler to avoid branches and use cmovl/cmovg in
399
  // x86.
400
16.9M
  const int32_t grad_clamp_M = (l < m) ? M : grad;
401
16.9M
  return (l > M) ? m : grad_clamp_M;
402
16.9M
}
Unexecuted instantiation: modular_image.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: transform.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: rct.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: palette.cc:jxl::ClampedGradient(int, int, int)
Unexecuted instantiation: quant_weights.cc:jxl::ClampedGradient(int, int, int)
403
404
2.82M
inline pixel_type_w Select(pixel_type_w a, pixel_type_w b, pixel_type_w c) {
405
2.82M
  pixel_type_w p = a + b - c;
406
2.82M
  pixel_type_w pa = std::abs(p - a);
407
2.82M
  pixel_type_w pb = std::abs(p - b);
408
2.82M
  return pa < pb ? a : b;
409
2.82M
}
410
411
inline void PrecomputeReferences(const Channel &ch, size_t y,
412
                                 const Image &image, uint32_t i,
413
2.13M
                                 Channel *references) {
414
2.13M
  ZeroFillImage(&references->plane);
415
2.13M
  uint32_t offset = 0;
416
2.13M
  size_t num_extra_props = references->w;
417
2.13M
  ptrdiff_t onerow = references->plane.PixelsPerRow();
418
2.13M
  for (int32_t j = static_cast<int32_t>(i) - 1;
419
2.54M
       j >= 0 && offset < num_extra_props; j--) {
420
407k
    if (image.channel[j].w != image.channel[i].w ||
421
346k
        image.channel[j].h != image.channel[i].h) {
422
346k
      continue;
423
346k
    }
424
61.0k
    if (image.channel[j].hshift != image.channel[i].hshift) continue;
425
50.4k
    if (image.channel[j].vshift != image.channel[i].vshift) continue;
426
47.6k
    pixel_type *JXL_RESTRICT rp = references->Row(0) + offset;
427
47.6k
    const pixel_type *JXL_RESTRICT rpp = image.channel[j].Row(y);
428
47.6k
    const pixel_type *JXL_RESTRICT rpprev = image.channel[j].Row(y ? y - 1 : 0);
429
290k
    for (size_t x = 0; x < ch.w; x++, rp += onerow) {
430
242k
      pixel_type_w v = rpp[x];
431
242k
      rp[0] = std::abs(v);
432
242k
      rp[1] = v;
433
242k
      pixel_type_w vleft = (x ? rpp[x - 1] : 0);
434
242k
      pixel_type_w vtop = (y ? rpprev[x] : vleft);
435
242k
      pixel_type_w vtopleft = (x && y ? rpprev[x - 1] : vleft);
436
242k
      pixel_type_w vpredicted = ClampedGradient(vleft, vtop, vtopleft);
437
242k
      rp[2] = std::abs(v - vpredicted);
438
242k
      rp[3] = v - vpredicted;
439
242k
    }
440
441
47.6k
    offset += kExtraPropsPerChannel;
442
47.6k
  }
443
2.13M
}
444
445
struct PredictionResult {
446
  int context = 0;
447
  pixel_type_w guess = 0;
448
  Predictor predictor;
449
  int32_t multiplier;
450
};
451
452
inline void InitPropsRow(
453
    Properties *p,
454
    const std::array<pixel_type, kNumStaticProperties> &static_props,
455
2.13M
    const int y) {
456
6.39M
  for (size_t i = 0; i < kNumStaticProperties; i++) {
457
4.26M
    (*p)[i] = static_props[i];
458
4.26M
  }
459
2.13M
  (*p)[2] = y;
460
2.13M
  (*p)[9] = 0;  // local gradient.
461
2.13M
}
462
463
namespace detail {
464
enum PredictorMode {
465
  kUseTree = 1,
466
  kUseWP = 2,
467
  kForceComputeProperties = 4,
468
  kAllPredictions = 8,
469
  kNoEdgeCases = 16
470
};
471
472
JXL_INLINE pixel_type_w PredictOne(Predictor p, pixel_type_w left,
473
                                   pixel_type_w top, pixel_type_w toptop,
474
                                   pixel_type_w topleft, pixel_type_w topright,
475
                                   pixel_type_w leftleft,
476
                                   pixel_type_w toprightright,
477
361M
                                   pixel_type_w wp_pred) {
478
361M
  switch (p) {
479
33.8M
    case Predictor::Zero:
480
33.8M
      return pixel_type_w{0};
481
24.9M
    case Predictor::Left:
482
24.9M
      return left;
483
32.8M
    case Predictor::Top:
484
32.8M
      return top;
485
2.82M
    case Predictor::Select:
486
2.82M
      return Select(left, top, topleft);
487
28.4M
    case Predictor::Weighted:
488
28.4M
      return wp_pred;
489
222M
    case Predictor::Gradient:
490
222M
      return pixel_type_w{ClampedGradient(left, top, topleft)};
491
1.88M
    case Predictor::TopLeft:
492
1.88M
      return topleft;
493
456k
    case Predictor::TopRight:
494
456k
      return topright;
495
632k
    case Predictor::LeftLeft:
496
632k
      return leftleft;
497
2.03M
    case Predictor::Average0:
498
2.03M
      return (left + top) / 2;
499
122k
    case Predictor::Average1:
500
122k
      return (left + topleft) / 2;
501
89.2k
    case Predictor::Average2:
502
89.2k
      return (topleft + top) / 2;
503
3.76M
    case Predictor::Average3:
504
3.76M
      return (top + topright) / 2;
505
7.28M
    case Predictor::Average4:
506
7.28M
      return (6 * top - 2 * toptop + 7 * left + 1 * leftleft +
507
7.28M
              1 * toprightright + 3 * topright + 8) /
508
7.28M
             16;
509
0
    default:
510
0
      return pixel_type_w{0};
511
361M
  }
512
361M
}
513
514
template <int mode>
515
JXL_INLINE PredictionResult Predict(
516
    Properties *p, size_t w, const pixel_type *JXL_RESTRICT pp,
517
    const ptrdiff_t onerow, const size_t x, const size_t y, Predictor predictor,
518
    const MATreeLookup *lookup, const Channel *references,
519
361M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
361M
  size_t offset = 3;
522
361M
  constexpr bool compute_properties =
523
361M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
361M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
361M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
361M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
361M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
361M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
361M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
361M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
361M
  pixel_type_w toprightright =
532
361M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
361M
  if (compute_properties) {
535
    // location
536
290M
    (*p)[offset++] = x;
537
    // neighbors
538
290M
    (*p)[offset++] = top > 0 ? top : -top;
539
290M
    (*p)[offset++] = left > 0 ? left : -left;
540
290M
    (*p)[offset++] = top;
541
290M
    (*p)[offset++] = left;
542
543
    // local gradient
544
290M
    (*p)[offset] = left - (*p)[offset + 1];
545
290M
    offset++;
546
    // local gradient
547
290M
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
290M
    (*p)[offset++] = left - topleft;
551
290M
    (*p)[offset++] = topleft - top;
552
290M
    (*p)[offset++] = top - topright;
553
290M
    (*p)[offset++] = top - toptop;
554
290M
    (*p)[offset++] = left - leftleft;
555
290M
  }
556
557
361M
  pixel_type_w wp_pred = 0;
558
361M
  if (mode & kUseWP) {
559
238M
    wp_pred = wp_state->Predict<compute_properties>(
560
238M
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
238M
  }
562
361M
  if (!nec && compute_properties) {
563
110M
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
110M
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
162M
    for (size_t i = 0; i < references->w; i++) {
567
51.6M
      (*p)[offset++] = rp[i];
568
51.6M
    }
569
110M
  }
570
361M
  PredictionResult result;
571
361M
  if (mode & kUseTree) {
572
178M
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
178M
    result.context = lr.context;
574
178M
    result.guess = lr.offset;
575
178M
    result.multiplier = lr.multiplier;
576
178M
    predictor = lr.predictor;
577
178M
  }
578
361M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
361M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
361M
                             leftleft, toprightright, wp_pred);
587
361M
  result.predictor = predictor;
588
589
361M
  return result;
590
361M
}
jxl::PredictionResult jxl::detail::Predict<0>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Line
Count
Source
519
48.9M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
48.9M
  size_t offset = 3;
522
48.9M
  constexpr bool compute_properties =
523
48.9M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
48.9M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
48.9M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
48.9M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
48.9M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
48.9M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
48.9M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
48.9M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
48.9M
  pixel_type_w toprightright =
532
48.9M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
48.9M
  if (compute_properties) {
535
    // location
536
0
    (*p)[offset++] = x;
537
    // neighbors
538
0
    (*p)[offset++] = top > 0 ? top : -top;
539
0
    (*p)[offset++] = left > 0 ? left : -left;
540
0
    (*p)[offset++] = top;
541
0
    (*p)[offset++] = left;
542
543
    // local gradient
544
0
    (*p)[offset] = left - (*p)[offset + 1];
545
0
    offset++;
546
    // local gradient
547
0
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
0
    (*p)[offset++] = left - topleft;
551
0
    (*p)[offset++] = topleft - top;
552
0
    (*p)[offset++] = top - topright;
553
0
    (*p)[offset++] = top - toptop;
554
0
    (*p)[offset++] = left - leftleft;
555
0
  }
556
557
48.9M
  pixel_type_w wp_pred = 0;
558
48.9M
  if (mode & kUseWP) {
559
0
    wp_pred = wp_state->Predict<compute_properties>(
560
0
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
0
  }
562
48.9M
  if (!nec && compute_properties) {
563
0
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
0
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
0
    for (size_t i = 0; i < references->w; i++) {
567
0
      (*p)[offset++] = rp[i];
568
0
    }
569
0
  }
570
48.9M
  PredictionResult result;
571
48.9M
  if (mode & kUseTree) {
572
0
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
0
    result.context = lr.context;
574
0
    result.guess = lr.offset;
575
0
    result.multiplier = lr.multiplier;
576
0
    predictor = lr.predictor;
577
0
  }
578
48.9M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
48.9M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
48.9M
                             leftleft, toprightright, wp_pred);
587
48.9M
  result.predictor = predictor;
588
589
48.9M
  return result;
590
48.9M
}
jxl::PredictionResult jxl::detail::Predict<2>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Line
Count
Source
519
22.9M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
22.9M
  size_t offset = 3;
522
22.9M
  constexpr bool compute_properties =
523
22.9M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
22.9M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
22.9M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
22.9M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
22.9M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
22.9M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
22.9M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
22.9M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
22.9M
  pixel_type_w toprightright =
532
22.9M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
22.9M
  if (compute_properties) {
535
    // location
536
0
    (*p)[offset++] = x;
537
    // neighbors
538
0
    (*p)[offset++] = top > 0 ? top : -top;
539
0
    (*p)[offset++] = left > 0 ? left : -left;
540
0
    (*p)[offset++] = top;
541
0
    (*p)[offset++] = left;
542
543
    // local gradient
544
0
    (*p)[offset] = left - (*p)[offset + 1];
545
0
    offset++;
546
    // local gradient
547
0
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
0
    (*p)[offset++] = left - topleft;
551
0
    (*p)[offset++] = topleft - top;
552
0
    (*p)[offset++] = top - topright;
553
0
    (*p)[offset++] = top - toptop;
554
0
    (*p)[offset++] = left - leftleft;
555
0
  }
556
557
22.9M
  pixel_type_w wp_pred = 0;
558
22.9M
  if (mode & kUseWP) {
559
22.9M
    wp_pred = wp_state->Predict<compute_properties>(
560
22.9M
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
22.9M
  }
562
22.9M
  if (!nec && compute_properties) {
563
0
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
0
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
0
    for (size_t i = 0; i < references->w; i++) {
567
0
      (*p)[offset++] = rp[i];
568
0
    }
569
0
  }
570
22.9M
  PredictionResult result;
571
22.9M
  if (mode & kUseTree) {
572
0
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
0
    result.context = lr.context;
574
0
    result.guess = lr.offset;
575
0
    result.multiplier = lr.multiplier;
576
0
    predictor = lr.predictor;
577
0
  }
578
22.9M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
22.9M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
22.9M
                             leftleft, toprightright, wp_pred);
587
22.9M
  result.predictor = predictor;
588
589
22.9M
  return result;
590
22.9M
}
jxl::PredictionResult jxl::detail::Predict<1>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Line
Count
Source
519
17.5M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
17.5M
  size_t offset = 3;
522
17.5M
  constexpr bool compute_properties =
523
17.5M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
17.5M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
17.5M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
17.5M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
17.5M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
17.5M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
17.5M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
17.5M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
17.5M
  pixel_type_w toprightright =
532
17.5M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
17.5M
  if (compute_properties) {
535
    // location
536
17.5M
    (*p)[offset++] = x;
537
    // neighbors
538
17.5M
    (*p)[offset++] = top > 0 ? top : -top;
539
17.5M
    (*p)[offset++] = left > 0 ? left : -left;
540
17.5M
    (*p)[offset++] = top;
541
17.5M
    (*p)[offset++] = left;
542
543
    // local gradient
544
17.5M
    (*p)[offset] = left - (*p)[offset + 1];
545
17.5M
    offset++;
546
    // local gradient
547
17.5M
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
17.5M
    (*p)[offset++] = left - topleft;
551
17.5M
    (*p)[offset++] = topleft - top;
552
17.5M
    (*p)[offset++] = top - topright;
553
17.5M
    (*p)[offset++] = top - toptop;
554
17.5M
    (*p)[offset++] = left - leftleft;
555
17.5M
  }
556
557
17.5M
  pixel_type_w wp_pred = 0;
558
17.5M
  if (mode & kUseWP) {
559
0
    wp_pred = wp_state->Predict<compute_properties>(
560
0
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
0
  }
562
17.5M
  if (!nec && compute_properties) {
563
17.5M
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
17.5M
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
22.6M
    for (size_t i = 0; i < references->w; i++) {
567
5.09M
      (*p)[offset++] = rp[i];
568
5.09M
    }
569
17.5M
  }
570
17.5M
  PredictionResult result;
571
17.5M
  if (mode & kUseTree) {
572
17.5M
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
17.5M
    result.context = lr.context;
574
17.5M
    result.guess = lr.offset;
575
17.5M
    result.multiplier = lr.multiplier;
576
17.5M
    predictor = lr.predictor;
577
17.5M
  }
578
17.5M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
17.5M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
17.5M
                             leftleft, toprightright, wp_pred);
587
17.5M
  result.predictor = predictor;
588
589
17.5M
  return result;
590
17.5M
}
jxl::PredictionResult jxl::detail::Predict<17>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Line
Count
Source
519
56.7M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
56.7M
  size_t offset = 3;
522
56.7M
  constexpr bool compute_properties =
523
56.7M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
56.7M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
56.7M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
56.7M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
56.7M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
56.7M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
56.7M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
56.7M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
56.7M
  pixel_type_w toprightright =
532
56.7M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
56.7M
  if (compute_properties) {
535
    // location
536
56.7M
    (*p)[offset++] = x;
537
    // neighbors
538
56.7M
    (*p)[offset++] = top > 0 ? top : -top;
539
56.7M
    (*p)[offset++] = left > 0 ? left : -left;
540
56.7M
    (*p)[offset++] = top;
541
56.7M
    (*p)[offset++] = left;
542
543
    // local gradient
544
56.7M
    (*p)[offset] = left - (*p)[offset + 1];
545
56.7M
    offset++;
546
    // local gradient
547
56.7M
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
56.7M
    (*p)[offset++] = left - topleft;
551
56.7M
    (*p)[offset++] = topleft - top;
552
56.7M
    (*p)[offset++] = top - topright;
553
56.7M
    (*p)[offset++] = top - toptop;
554
56.7M
    (*p)[offset++] = left - leftleft;
555
56.7M
  }
556
557
56.7M
  pixel_type_w wp_pred = 0;
558
56.7M
  if (mode & kUseWP) {
559
0
    wp_pred = wp_state->Predict<compute_properties>(
560
0
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
0
  }
562
56.7M
  if (!nec && compute_properties) {
563
0
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
0
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
0
    for (size_t i = 0; i < references->w; i++) {
567
0
      (*p)[offset++] = rp[i];
568
0
    }
569
0
  }
570
56.7M
  PredictionResult result;
571
56.7M
  if (mode & kUseTree) {
572
56.7M
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
56.7M
    result.context = lr.context;
574
56.7M
    result.guess = lr.offset;
575
56.7M
    result.multiplier = lr.multiplier;
576
56.7M
    predictor = lr.predictor;
577
56.7M
  }
578
56.7M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
56.7M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
56.7M
                             leftleft, toprightright, wp_pred);
587
56.7M
  result.predictor = predictor;
588
589
56.7M
  return result;
590
56.7M
}
jxl::PredictionResult jxl::detail::Predict<3>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Line
Count
Source
519
88.8M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
88.8M
  size_t offset = 3;
522
88.8M
  constexpr bool compute_properties =
523
88.8M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
88.8M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
88.8M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
88.8M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
88.8M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
88.8M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
88.8M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
88.8M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
88.8M
  pixel_type_w toprightright =
532
88.8M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
88.8M
  if (compute_properties) {
535
    // location
536
88.8M
    (*p)[offset++] = x;
537
    // neighbors
538
88.8M
    (*p)[offset++] = top > 0 ? top : -top;
539
88.8M
    (*p)[offset++] = left > 0 ? left : -left;
540
88.8M
    (*p)[offset++] = top;
541
88.8M
    (*p)[offset++] = left;
542
543
    // local gradient
544
88.8M
    (*p)[offset] = left - (*p)[offset + 1];
545
88.8M
    offset++;
546
    // local gradient
547
88.8M
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
88.8M
    (*p)[offset++] = left - topleft;
551
88.8M
    (*p)[offset++] = topleft - top;
552
88.8M
    (*p)[offset++] = top - topright;
553
88.8M
    (*p)[offset++] = top - toptop;
554
88.8M
    (*p)[offset++] = left - leftleft;
555
88.8M
  }
556
557
88.8M
  pixel_type_w wp_pred = 0;
558
88.8M
  if (mode & kUseWP) {
559
88.8M
    wp_pred = wp_state->Predict<compute_properties>(
560
88.8M
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
88.8M
  }
562
88.8M
  if (!nec && compute_properties) {
563
88.8M
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
88.8M
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
135M
    for (size_t i = 0; i < references->w; i++) {
567
46.5M
      (*p)[offset++] = rp[i];
568
46.5M
    }
569
88.8M
  }
570
88.8M
  PredictionResult result;
571
88.8M
  if (mode & kUseTree) {
572
88.8M
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
88.8M
    result.context = lr.context;
574
88.8M
    result.guess = lr.offset;
575
88.8M
    result.multiplier = lr.multiplier;
576
88.8M
    predictor = lr.predictor;
577
88.8M
  }
578
88.8M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
88.8M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
88.8M
                             leftleft, toprightright, wp_pred);
587
88.8M
  result.predictor = predictor;
588
589
88.8M
  return result;
590
88.8M
}
jxl::PredictionResult jxl::detail::Predict<19>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Line
Count
Source
519
15.8M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
15.8M
  size_t offset = 3;
522
15.8M
  constexpr bool compute_properties =
523
15.8M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
15.8M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
15.8M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
15.8M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
15.8M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
15.8M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
15.8M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
15.8M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
15.8M
  pixel_type_w toprightright =
532
15.8M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
15.8M
  if (compute_properties) {
535
    // location
536
15.8M
    (*p)[offset++] = x;
537
    // neighbors
538
15.8M
    (*p)[offset++] = top > 0 ? top : -top;
539
15.8M
    (*p)[offset++] = left > 0 ? left : -left;
540
15.8M
    (*p)[offset++] = top;
541
15.8M
    (*p)[offset++] = left;
542
543
    // local gradient
544
15.8M
    (*p)[offset] = left - (*p)[offset + 1];
545
15.8M
    offset++;
546
    // local gradient
547
15.8M
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
15.8M
    (*p)[offset++] = left - topleft;
551
15.8M
    (*p)[offset++] = topleft - top;
552
15.8M
    (*p)[offset++] = top - topright;
553
15.8M
    (*p)[offset++] = top - toptop;
554
15.8M
    (*p)[offset++] = left - leftleft;
555
15.8M
  }
556
557
15.8M
  pixel_type_w wp_pred = 0;
558
15.8M
  if (mode & kUseWP) {
559
15.8M
    wp_pred = wp_state->Predict<compute_properties>(
560
15.8M
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
15.8M
  }
562
15.8M
  if (!nec && compute_properties) {
563
0
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
0
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
0
    for (size_t i = 0; i < references->w; i++) {
567
0
      (*p)[offset++] = rp[i];
568
0
    }
569
0
  }
570
15.8M
  PredictionResult result;
571
15.8M
  if (mode & kUseTree) {
572
15.8M
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
15.8M
    result.context = lr.context;
574
15.8M
    result.guess = lr.offset;
575
15.8M
    result.multiplier = lr.multiplier;
576
15.8M
    predictor = lr.predictor;
577
15.8M
  }
578
15.8M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
15.8M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
15.8M
                             leftleft, toprightright, wp_pred);
587
15.8M
  result.predictor = predictor;
588
589
15.8M
  return result;
590
15.8M
}
jxl::PredictionResult jxl::detail::Predict<6>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Line
Count
Source
519
4.62M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
4.62M
  size_t offset = 3;
522
4.62M
  constexpr bool compute_properties =
523
4.62M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
4.62M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
4.62M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
4.62M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
4.62M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
4.62M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
4.62M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
4.62M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
4.62M
  pixel_type_w toprightright =
532
4.62M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
4.62M
  if (compute_properties) {
535
    // location
536
4.62M
    (*p)[offset++] = x;
537
    // neighbors
538
4.62M
    (*p)[offset++] = top > 0 ? top : -top;
539
4.62M
    (*p)[offset++] = left > 0 ? left : -left;
540
4.62M
    (*p)[offset++] = top;
541
4.62M
    (*p)[offset++] = left;
542
543
    // local gradient
544
4.62M
    (*p)[offset] = left - (*p)[offset + 1];
545
4.62M
    offset++;
546
    // local gradient
547
4.62M
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
4.62M
    (*p)[offset++] = left - topleft;
551
4.62M
    (*p)[offset++] = topleft - top;
552
4.62M
    (*p)[offset++] = top - topright;
553
4.62M
    (*p)[offset++] = top - toptop;
554
4.62M
    (*p)[offset++] = left - leftleft;
555
4.62M
  }
556
557
4.62M
  pixel_type_w wp_pred = 0;
558
4.62M
  if (mode & kUseWP) {
559
4.62M
    wp_pred = wp_state->Predict<compute_properties>(
560
4.62M
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
4.62M
  }
562
4.62M
  if (!nec && compute_properties) {
563
4.62M
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
4.62M
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
4.62M
    for (size_t i = 0; i < references->w; i++) {
567
0
      (*p)[offset++] = rp[i];
568
0
    }
569
4.62M
  }
570
4.62M
  PredictionResult result;
571
4.62M
  if (mode & kUseTree) {
572
0
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
0
    result.context = lr.context;
574
0
    result.guess = lr.offset;
575
0
    result.multiplier = lr.multiplier;
576
0
    predictor = lr.predictor;
577
0
  }
578
4.62M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
4.62M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
4.62M
                             leftleft, toprightright, wp_pred);
587
4.62M
  result.predictor = predictor;
588
589
4.62M
  return result;
590
4.62M
}
Unexecuted instantiation: jxl::PredictionResult jxl::detail::Predict<14>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
jxl::PredictionResult jxl::detail::Predict<22>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Line
Count
Source
519
106M
    weighted::State *wp_state, pixel_type_w *predictions) {
520
  // We start in position 3 because of 2 static properties + y.
521
106M
  size_t offset = 3;
522
106M
  constexpr bool compute_properties =
523
106M
      !!(mode & kUseTree) || !!(mode & kForceComputeProperties);
524
106M
  constexpr bool nec = !!(mode & kNoEdgeCases);
525
106M
  pixel_type_w left = (nec || x ? pp[-1] : (y ? pp[-onerow] : 0));
526
106M
  pixel_type_w top = (nec || y ? pp[-onerow] : left);
527
106M
  pixel_type_w topleft = (nec || (x && y) ? pp[-1 - onerow] : left);
528
106M
  pixel_type_w topright = (nec || (x + 1 < w && y) ? pp[1 - onerow] : top);
529
106M
  pixel_type_w leftleft = (nec || x > 1 ? pp[-2] : left);
530
106M
  pixel_type_w toptop = (nec || y > 1 ? pp[-onerow - onerow] : top);
531
106M
  pixel_type_w toprightright =
532
106M
      (nec || (x + 2 < w && y) ? pp[2 - onerow] : topright);
533
534
106M
  if (compute_properties) {
535
    // location
536
106M
    (*p)[offset++] = x;
537
    // neighbors
538
106M
    (*p)[offset++] = top > 0 ? top : -top;
539
106M
    (*p)[offset++] = left > 0 ? left : -left;
540
106M
    (*p)[offset++] = top;
541
106M
    (*p)[offset++] = left;
542
543
    // local gradient
544
106M
    (*p)[offset] = left - (*p)[offset + 1];
545
106M
    offset++;
546
    // local gradient
547
106M
    (*p)[offset++] = left + top - topleft;
548
549
    // FFV1 context properties
550
106M
    (*p)[offset++] = left - topleft;
551
106M
    (*p)[offset++] = topleft - top;
552
106M
    (*p)[offset++] = top - topright;
553
106M
    (*p)[offset++] = top - toptop;
554
106M
    (*p)[offset++] = left - leftleft;
555
106M
  }
556
557
106M
  pixel_type_w wp_pred = 0;
558
106M
  if (mode & kUseWP) {
559
106M
    wp_pred = wp_state->Predict<compute_properties>(
560
106M
        x, y, w, top, left, topright, topleft, toptop, p, offset);
561
106M
  }
562
106M
  if (!nec && compute_properties) {
563
0
    offset += weighted::kNumProperties;
564
    // Extra properties.
565
0
    const pixel_type *JXL_RESTRICT rp = references->Row(x);
566
0
    for (size_t i = 0; i < references->w; i++) {
567
0
      (*p)[offset++] = rp[i];
568
0
    }
569
0
  }
570
106M
  PredictionResult result;
571
106M
  if (mode & kUseTree) {
572
0
    MATreeLookup::LookupResult lr = lookup->Lookup(*p);
573
0
    result.context = lr.context;
574
0
    result.guess = lr.offset;
575
0
    result.multiplier = lr.multiplier;
576
0
    predictor = lr.predictor;
577
0
  }
578
106M
  if (mode & kAllPredictions) {
579
0
    for (size_t i = 0; i < kNumModularPredictors; i++) {
580
0
      predictions[i] =
581
0
          PredictOne(static_cast<Predictor>(i), left, top, toptop, topleft,
582
0
                     topright, leftleft, toprightright, wp_pred);
583
0
    }
584
0
  }
585
106M
  result.guess += PredictOne(predictor, left, top, toptop, topleft, topright,
586
106M
                             leftleft, toprightright, wp_pred);
587
106M
  result.predictor = predictor;
588
589
106M
  return result;
590
106M
}
Unexecuted instantiation: jxl::PredictionResult jxl::detail::Predict<30>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
Unexecuted instantiation: jxl::PredictionResult jxl::detail::Predict<8>(std::__1::vector<int, std::__1::allocator<int> >*, unsigned long, int const*, long, unsigned long, unsigned long, jxl::Predictor, jxl::MATreeLookup const*, jxl::Channel const*, jxl::weighted::State*, long*)
591
}  // namespace detail
592
593
inline PredictionResult PredictNoTreeNoWP(size_t w,
594
                                          const pixel_type *JXL_RESTRICT pp,
595
                                          const ptrdiff_t onerow, const int x,
596
48.9M
                                          const int y, Predictor predictor) {
597
48.9M
  return detail::Predict</*mode=*/0>(
598
48.9M
      /*p=*/nullptr, w, pp, onerow, x, y, predictor, /*lookup=*/nullptr,
599
48.9M
      /*references=*/nullptr, /*wp_state=*/nullptr, /*predictions=*/nullptr);
600
48.9M
}
601
602
inline PredictionResult PredictNoTreeWP(size_t w,
603
                                        const pixel_type *JXL_RESTRICT pp,
604
                                        const ptrdiff_t onerow, const int x,
605
                                        const int y, Predictor predictor,
606
22.9M
                                        weighted::State *wp_state) {
607
22.9M
  return detail::Predict<detail::kUseWP>(
608
22.9M
      /*p=*/nullptr, w, pp, onerow, x, y, predictor, /*lookup=*/nullptr,
609
22.9M
      /*references=*/nullptr, wp_state, /*predictions=*/nullptr);
610
22.9M
}
611
612
inline PredictionResult PredictTreeNoWP(Properties *p, size_t w,
613
                                        const pixel_type *JXL_RESTRICT pp,
614
                                        const ptrdiff_t onerow, const int x,
615
                                        const int y,
616
                                        const MATreeLookup &tree_lookup,
617
17.5M
                                        const Channel &references) {
618
17.5M
  return detail::Predict<detail::kUseTree>(
619
17.5M
      p, w, pp, onerow, x, y, Predictor::Zero, &tree_lookup, &references,
620
17.5M
      /*wp_state=*/nullptr, /*predictions=*/nullptr);
621
17.5M
}
622
// Only use for y > 1, x > 1, x < w-2, and empty references
623
JXL_INLINE PredictionResult
624
PredictTreeNoWPNEC(Properties *p, size_t w, const pixel_type *JXL_RESTRICT pp,
625
                   const ptrdiff_t onerow, const int x, const int y,
626
56.7M
                   const MATreeLookup &tree_lookup, const Channel &references) {
627
56.7M
  return detail::Predict<detail::kUseTree | detail::kNoEdgeCases>(
628
56.7M
      p, w, pp, onerow, x, y, Predictor::Zero, &tree_lookup, &references,
629
56.7M
      /*wp_state=*/nullptr, /*predictions=*/nullptr);
630
56.7M
}
631
632
inline PredictionResult PredictTreeWP(Properties *p, size_t w,
633
                                      const pixel_type *JXL_RESTRICT pp,
634
                                      const ptrdiff_t onerow, const int x,
635
                                      const int y,
636
                                      const MATreeLookup &tree_lookup,
637
                                      const Channel &references,
638
88.8M
                                      weighted::State *wp_state) {
639
88.8M
  return detail::Predict<detail::kUseTree | detail::kUseWP>(
640
88.8M
      p, w, pp, onerow, x, y, Predictor::Zero, &tree_lookup, &references,
641
88.8M
      wp_state, /*predictions=*/nullptr);
642
88.8M
}
643
JXL_INLINE PredictionResult PredictTreeWPNEC(Properties *p, size_t w,
644
                                             const pixel_type *JXL_RESTRICT pp,
645
                                             const ptrdiff_t onerow, const int x,
646
                                             const int y,
647
                                             const MATreeLookup &tree_lookup,
648
                                             const Channel &references,
649
15.8M
                                             weighted::State *wp_state) {
650
15.8M
  return detail::Predict<detail::kUseTree | detail::kUseWP |
651
15.8M
                         detail::kNoEdgeCases>(
652
15.8M
      p, w, pp, onerow, x, y, Predictor::Zero, &tree_lookup, &references,
653
15.8M
      wp_state, /*predictions=*/nullptr);
654
15.8M
}
655
656
inline PredictionResult PredictLearn(Properties *p, size_t w,
657
                                     const pixel_type *JXL_RESTRICT pp,
658
                                     const ptrdiff_t onerow, const int x,
659
                                     const int y, Predictor predictor,
660
                                     const Channel &references,
661
4.62M
                                     weighted::State *wp_state) {
662
4.62M
  return detail::Predict<detail::kForceComputeProperties | detail::kUseWP>(
663
4.62M
      p, w, pp, onerow, x, y, predictor, /*lookup=*/nullptr, &references,
664
4.62M
      wp_state, /*predictions=*/nullptr);
665
4.62M
}
666
667
inline void PredictLearnAll(Properties *p, size_t w,
668
                            const pixel_type *JXL_RESTRICT pp,
669
                            const ptrdiff_t onerow, const int x, const int y,
670
                            const Channel &references,
671
                            weighted::State *wp_state,
672
0
                            pixel_type_w *predictions) {
673
0
  detail::Predict<detail::kForceComputeProperties | detail::kUseWP |
674
0
                  detail::kAllPredictions>(
675
0
      p, w, pp, onerow, x, y, Predictor::Zero,
676
0
      /*lookup=*/nullptr, &references, wp_state, predictions);
677
0
}
678
inline PredictionResult PredictLearnNEC(Properties *p, size_t w,
679
                                        const pixel_type *JXL_RESTRICT pp,
680
                                        const ptrdiff_t onerow, const int x,
681
                                        const int y, Predictor predictor,
682
                                        const Channel &references,
683
106M
                                        weighted::State *wp_state) {
684
106M
  return detail::Predict<detail::kForceComputeProperties | detail::kUseWP |
685
106M
                         detail::kNoEdgeCases>(
686
106M
      p, w, pp, onerow, x, y, predictor, /*lookup=*/nullptr, &references,
687
106M
      wp_state, /*predictions=*/nullptr);
688
106M
}
689
690
inline void PredictLearnAllNEC(Properties *p, size_t w,
691
                               const pixel_type *JXL_RESTRICT pp,
692
                               const ptrdiff_t onerow, const int x, const int y,
693
                               const Channel &references,
694
                               weighted::State *wp_state,
695
0
                               pixel_type_w *predictions) {
696
0
  detail::Predict<detail::kForceComputeProperties | detail::kUseWP |
697
0
                  detail::kAllPredictions | detail::kNoEdgeCases>(
698
0
      p, w, pp, onerow, x, y, Predictor::Zero,
699
0
      /*lookup=*/nullptr, &references, wp_state, predictions);
700
0
}
701
702
inline void PredictAllNoWP(size_t w, const pixel_type *JXL_RESTRICT pp,
703
                           const ptrdiff_t onerow, const int x, const int y,
704
0
                           pixel_type_w *predictions) {
705
0
  detail::Predict<detail::kAllPredictions>(
706
0
      /*p=*/nullptr, w, pp, onerow, x, y, Predictor::Zero,
707
0
      /*lookup=*/nullptr,
708
0
      /*references=*/nullptr, /*wp_state=*/nullptr, predictions);
709
0
}
710
}  // namespace jxl
711
712
#endif  // LIB_JXL_MODULAR_ENCODING_CONTEXT_PREDICT_H_