Coverage Report

Created: 2025-08-11 08:01

/src/libjxl/lib/jxl/enc_cluster.cc
Line
Count
Source (jump to first uncovered line)
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
#include "lib/jxl/enc_cluster.h"
7
8
#include <algorithm>
9
#include <cstddef>
10
#include <cstdint>
11
#include <limits>
12
#include <map>
13
#include <numeric>
14
#include <queue>
15
#include <tuple>
16
#include <vector>
17
18
#include "lib/jxl/base/status.h"
19
#include "lib/jxl/enc_ans_params.h"
20
21
#undef HWY_TARGET_INCLUDE
22
#define HWY_TARGET_INCLUDE "lib/jxl/enc_cluster.cc"
23
#include <hwy/foreach_target.h>
24
#include <hwy/highway.h>
25
26
#include "lib/jxl/base/fast_math-inl.h"
27
HWY_BEFORE_NAMESPACE();
28
namespace jxl {
29
namespace HWY_NAMESPACE {
30
31
// These templates are not found via ADL.
32
using hwy::HWY_NAMESPACE::AllTrue;
33
using hwy::HWY_NAMESPACE::Eq;
34
using hwy::HWY_NAMESPACE::GetLane;
35
using hwy::HWY_NAMESPACE::IfThenZeroElse;
36
using hwy::HWY_NAMESPACE::SumOfLanes;
37
using hwy::HWY_NAMESPACE::Zero;
38
39
template <class V>
40
423M
V Entropy(V count, V inv_total, V total) {
41
423M
  const HWY_CAPPED(float, Histogram::kRounding) d;
42
423M
  const auto zero = Set(d, 0.0f);
43
  // TODO(eustas): why (0 - x) instead of Neg(x)?
44
423M
  return IfThenZeroElse(
45
423M
      Eq(count, total),
46
423M
      Sub(zero, Mul(count, FastLog2f(d, Mul(inv_total, count)))));
47
423M
}
Unexecuted instantiation: hwy::N_SSE4::Vec128<float, 4ul> jxl::N_SSE4::Entropy<hwy::N_SSE4::Vec128<float, 4ul> >(hwy::N_SSE4::Vec128<float, 4ul>, hwy::N_SSE4::Vec128<float, 4ul>, hwy::N_SSE4::Vec128<float, 4ul>)
hwy::N_AVX2::Vec256<float> jxl::N_AVX2::Entropy<hwy::N_AVX2::Vec256<float> >(hwy::N_AVX2::Vec256<float>, hwy::N_AVX2::Vec256<float>, hwy::N_AVX2::Vec256<float>)
Line
Count
Source
40
423M
V Entropy(V count, V inv_total, V total) {
41
423M
  const HWY_CAPPED(float, Histogram::kRounding) d;
42
423M
  const auto zero = Set(d, 0.0f);
43
  // TODO(eustas): why (0 - x) instead of Neg(x)?
44
423M
  return IfThenZeroElse(
45
423M
      Eq(count, total),
46
423M
      Sub(zero, Mul(count, FastLog2f(d, Mul(inv_total, count)))));
47
423M
}
Unexecuted instantiation: hwy::N_AVX3::Vec256<float> jxl::N_AVX3::Entropy<hwy::N_AVX3::Vec256<float> >(hwy::N_AVX3::Vec256<float>, hwy::N_AVX3::Vec256<float>, hwy::N_AVX3::Vec256<float>)
Unexecuted instantiation: hwy::N_AVX3_ZEN4::Vec256<float> jxl::N_AVX3_ZEN4::Entropy<hwy::N_AVX3_ZEN4::Vec256<float> >(hwy::N_AVX3_ZEN4::Vec256<float>, hwy::N_AVX3_ZEN4::Vec256<float>, hwy::N_AVX3_ZEN4::Vec256<float>)
Unexecuted instantiation: hwy::N_AVX3_SPR::Vec256<float> jxl::N_AVX3_SPR::Entropy<hwy::N_AVX3_SPR::Vec256<float> >(hwy::N_AVX3_SPR::Vec256<float>, hwy::N_AVX3_SPR::Vec256<float>, hwy::N_AVX3_SPR::Vec256<float>)
Unexecuted instantiation: hwy::N_SSE2::Vec128<float, 4ul> jxl::N_SSE2::Entropy<hwy::N_SSE2::Vec128<float, 4ul> >(hwy::N_SSE2::Vec128<float, 4ul>, hwy::N_SSE2::Vec128<float, 4ul>, hwy::N_SSE2::Vec128<float, 4ul>)
48
49
449k
void HistogramCondition(Histogram& a) {
50
449k
  const HWY_CAPPED(int32_t, Histogram::kRounding) di;
51
449k
  const auto kZero = Zero(di);
52
449k
  auto total = kZero;
53
449k
  int nz_pos = -static_cast<int>(Lanes(di));
54
2.37M
  for (size_t i = 0; i < a.counts.size(); i += Lanes(di)) {
55
1.92M
    const auto counts = LoadU(di, &a.counts[i]);
56
1.92M
    const bool nz = !AllTrue(di, Eq(counts, kZero));
57
1.92M
    total = Add(total, counts);
58
1.92M
    if (nz) nz_pos = i;
59
1.92M
  }
60
449k
  a.counts.resize(nz_pos + Lanes(di));
61
449k
  a.total_count = GetLane(SumOfLanes(di, total));
62
449k
}
Unexecuted instantiation: jxl::N_SSE4::HistogramCondition(jxl::Histogram&)
jxl::N_AVX2::HistogramCondition(jxl::Histogram&)
Line
Count
Source
49
449k
void HistogramCondition(Histogram& a) {
50
449k
  const HWY_CAPPED(int32_t, Histogram::kRounding) di;
51
449k
  const auto kZero = Zero(di);
52
449k
  auto total = kZero;
53
449k
  int nz_pos = -static_cast<int>(Lanes(di));
54
2.37M
  for (size_t i = 0; i < a.counts.size(); i += Lanes(di)) {
55
1.92M
    const auto counts = LoadU(di, &a.counts[i]);
56
1.92M
    const bool nz = !AllTrue(di, Eq(counts, kZero));
57
1.92M
    total = Add(total, counts);
58
1.92M
    if (nz) nz_pos = i;
59
1.92M
  }
60
449k
  a.counts.resize(nz_pos + Lanes(di));
61
449k
  a.total_count = GetLane(SumOfLanes(di, total));
62
449k
}
Unexecuted instantiation: jxl::N_AVX3::HistogramCondition(jxl::Histogram&)
Unexecuted instantiation: jxl::N_AVX3_ZEN4::HistogramCondition(jxl::Histogram&)
Unexecuted instantiation: jxl::N_AVX3_SPR::HistogramCondition(jxl::Histogram&)
Unexecuted instantiation: jxl::N_SSE2::HistogramCondition(jxl::Histogram&)
63
64
13.7M
void HistogramEntropy(const Histogram& a) {
65
13.7M
  a.entropy = 0.0f;
66
13.7M
  if (a.total_count == 0) return;
67
68
5.75M
  const HWY_CAPPED(float, Histogram::kRounding) df;
69
5.75M
  const HWY_CAPPED(int32_t, Histogram::kRounding) di;
70
71
5.75M
  const auto inv_tot = Set(df, 1.0f / a.total_count);
72
5.75M
  auto entropy_lanes = Zero(df);
73
5.75M
  auto total = Set(df, a.total_count);
74
75
17.7M
  for (size_t i = 0; i < a.counts.size(); i += Lanes(di)) {
76
11.9M
    const auto counts = LoadU(di, &a.counts[i]);
77
11.9M
    entropy_lanes =
78
11.9M
        Add(entropy_lanes, Entropy(ConvertTo(df, counts), inv_tot, total));
79
11.9M
  }
80
5.75M
  a.entropy += GetLane(SumOfLanes(df, entropy_lanes));
81
5.75M
}
Unexecuted instantiation: jxl::N_SSE4::HistogramEntropy(jxl::Histogram const&)
jxl::N_AVX2::HistogramEntropy(jxl::Histogram const&)
Line
Count
Source
64
13.7M
void HistogramEntropy(const Histogram& a) {
65
13.7M
  a.entropy = 0.0f;
66
13.7M
  if (a.total_count == 0) return;
67
68
5.75M
  const HWY_CAPPED(float, Histogram::kRounding) df;
69
5.75M
  const HWY_CAPPED(int32_t, Histogram::kRounding) di;
70
71
5.75M
  const auto inv_tot = Set(df, 1.0f / a.total_count);
72
5.75M
  auto entropy_lanes = Zero(df);
73
5.75M
  auto total = Set(df, a.total_count);
74
75
17.7M
  for (size_t i = 0; i < a.counts.size(); i += Lanes(di)) {
76
11.9M
    const auto counts = LoadU(di, &a.counts[i]);
77
11.9M
    entropy_lanes =
78
11.9M
        Add(entropy_lanes, Entropy(ConvertTo(df, counts), inv_tot, total));
79
11.9M
  }
80
5.75M
  a.entropy += GetLane(SumOfLanes(df, entropy_lanes));
81
5.75M
}
Unexecuted instantiation: jxl::N_AVX3::HistogramEntropy(jxl::Histogram const&)
Unexecuted instantiation: jxl::N_AVX3_ZEN4::HistogramEntropy(jxl::Histogram const&)
Unexecuted instantiation: jxl::N_AVX3_SPR::HistogramEntropy(jxl::Histogram const&)
Unexecuted instantiation: jxl::N_SSE2::HistogramEntropy(jxl::Histogram const&)
82
83
138M
float HistogramDistance(const Histogram& a, const Histogram& b) {
84
138M
  if (a.total_count == 0 || b.total_count == 0) return 0;
85
86
138M
  const HWY_CAPPED(float, Histogram::kRounding) df;
87
138M
  const HWY_CAPPED(int32_t, Histogram::kRounding) di;
88
89
138M
  const auto inv_tot = Set(df, 1.0f / (a.total_count + b.total_count));
90
138M
  auto distance_lanes = Zero(df);
91
138M
  auto total = Set(df, a.total_count + b.total_count);
92
93
550M
  for (size_t i = 0; i < std::max(a.counts.size(), b.counts.size());
94
412M
       i += Lanes(di)) {
95
412M
    const auto a_counts =
96
412M
        a.counts.size() > i ? LoadU(di, &a.counts[i]) : Zero(di);
97
412M
    const auto b_counts =
98
412M
        b.counts.size() > i ? LoadU(di, &b.counts[i]) : Zero(di);
99
412M
    const auto counts = ConvertTo(df, Add(a_counts, b_counts));
100
412M
    distance_lanes = Add(distance_lanes, Entropy(counts, inv_tot, total));
101
412M
  }
102
138M
  const float total_distance = GetLane(SumOfLanes(df, distance_lanes));
103
138M
  return total_distance - a.entropy - b.entropy;
104
138M
}
Unexecuted instantiation: jxl::N_SSE4::HistogramDistance(jxl::Histogram const&, jxl::Histogram const&)
jxl::N_AVX2::HistogramDistance(jxl::Histogram const&, jxl::Histogram const&)
Line
Count
Source
83
138M
float HistogramDistance(const Histogram& a, const Histogram& b) {
84
138M
  if (a.total_count == 0 || b.total_count == 0) return 0;
85
86
138M
  const HWY_CAPPED(float, Histogram::kRounding) df;
87
138M
  const HWY_CAPPED(int32_t, Histogram::kRounding) di;
88
89
138M
  const auto inv_tot = Set(df, 1.0f / (a.total_count + b.total_count));
90
138M
  auto distance_lanes = Zero(df);
91
138M
  auto total = Set(df, a.total_count + b.total_count);
92
93
550M
  for (size_t i = 0; i < std::max(a.counts.size(), b.counts.size());
94
412M
       i += Lanes(di)) {
95
412M
    const auto a_counts =
96
412M
        a.counts.size() > i ? LoadU(di, &a.counts[i]) : Zero(di);
97
412M
    const auto b_counts =
98
412M
        b.counts.size() > i ? LoadU(di, &b.counts[i]) : Zero(di);
99
412M
    const auto counts = ConvertTo(df, Add(a_counts, b_counts));
100
412M
    distance_lanes = Add(distance_lanes, Entropy(counts, inv_tot, total));
101
412M
  }
102
138M
  const float total_distance = GetLane(SumOfLanes(df, distance_lanes));
103
138M
  return total_distance - a.entropy - b.entropy;
104
138M
}
Unexecuted instantiation: jxl::N_AVX3::HistogramDistance(jxl::Histogram const&, jxl::Histogram const&)
Unexecuted instantiation: jxl::N_AVX3_ZEN4::HistogramDistance(jxl::Histogram const&, jxl::Histogram const&)
Unexecuted instantiation: jxl::N_AVX3_SPR::HistogramDistance(jxl::Histogram const&, jxl::Histogram const&)
Unexecuted instantiation: jxl::N_SSE2::HistogramDistance(jxl::Histogram const&, jxl::Histogram const&)
105
106
constexpr const float kInfinity = std::numeric_limits<float>::infinity();
107
108
0
float HistogramKLDivergence(const Histogram& actual, const Histogram& coding) {
109
0
  if (actual.total_count == 0) return 0;
110
0
  if (coding.total_count == 0) return kInfinity;
111
112
0
  const HWY_CAPPED(float, Histogram::kRounding) df;
113
0
  const HWY_CAPPED(int32_t, Histogram::kRounding) di;
114
115
0
  const auto coding_inv = Set(df, 1.0f / coding.total_count);
116
0
  auto cost_lanes = Zero(df);
117
118
0
  for (size_t i = 0; i < actual.counts.size(); i += Lanes(di)) {
119
0
    const auto counts = LoadU(di, &actual.counts[i]);
120
0
    const auto coding_counts =
121
0
        coding.counts.size() > i ? LoadU(di, &coding.counts[i]) : Zero(di);
122
0
    const auto coding_probs = Mul(ConvertTo(df, coding_counts), coding_inv);
123
0
    const auto neg_coding_cost = BitCast(
124
0
        df,
125
0
        IfThenZeroElse(Eq(counts, Zero(di)),
126
0
                       IfThenElse(Eq(coding_counts, Zero(di)),
127
0
                                  BitCast(di, Set(df, -kInfinity)),
128
0
                                  BitCast(di, FastLog2f(df, coding_probs)))));
129
0
    cost_lanes = NegMulAdd(ConvertTo(df, counts), neg_coding_cost, cost_lanes);
130
0
  }
131
0
  const float total_cost = GetLane(SumOfLanes(df, cost_lanes));
132
0
  return total_cost - actual.entropy;
133
0
}
Unexecuted instantiation: jxl::N_SSE4::HistogramKLDivergence(jxl::Histogram const&, jxl::Histogram const&)
Unexecuted instantiation: jxl::N_AVX2::HistogramKLDivergence(jxl::Histogram const&, jxl::Histogram const&)
Unexecuted instantiation: jxl::N_AVX3::HistogramKLDivergence(jxl::Histogram const&, jxl::Histogram const&)
Unexecuted instantiation: jxl::N_AVX3_ZEN4::HistogramKLDivergence(jxl::Histogram const&, jxl::Histogram const&)
Unexecuted instantiation: jxl::N_AVX3_SPR::HistogramKLDivergence(jxl::Histogram const&, jxl::Histogram const&)
Unexecuted instantiation: jxl::N_SSE2::HistogramKLDivergence(jxl::Histogram const&, jxl::Histogram const&)
134
135
// First step of a k-means clustering with a fancy distance metric.
136
Status FastClusterHistograms(const std::vector<Histogram>& in,
137
                             size_t max_histograms, std::vector<Histogram>* out,
138
14.3k
                             std::vector<uint32_t>* histogram_symbols) {
139
14.3k
  const size_t prev_histograms = out->size();
140
14.3k
  out->reserve(max_histograms);
141
14.3k
  histogram_symbols->clear();
142
14.3k
  histogram_symbols->resize(in.size(), max_histograms);
143
144
14.3k
  std::vector<float> dists(in.size(), std::numeric_limits<float>::max());
145
14.3k
  size_t largest_idx = 0;
146
13.1M
  for (size_t i = 0; i < in.size(); i++) {
147
13.1M
    if (in[i].total_count == 0) {
148
11.1M
      (*histogram_symbols)[i] = 0;
149
11.1M
      dists[i] = 0.0f;
150
11.1M
      continue;
151
11.1M
    }
152
1.96M
    HistogramEntropy(in[i]);
153
1.96M
    if (in[i].total_count > in[largest_idx].total_count) {
154
27.0k
      largest_idx = i;
155
27.0k
    }
156
1.96M
  }
157
158
14.3k
  if (prev_histograms > 0) {
159
0
    for (size_t j = 0; j < prev_histograms; ++j) {
160
0
      HistogramEntropy((*out)[j]);
161
0
    }
162
0
    for (size_t i = 0; i < in.size(); i++) {
163
0
      if (dists[i] == 0.0f) continue;
164
0
      for (size_t j = 0; j < prev_histograms; ++j) {
165
0
        dists[i] = std::min(HistogramKLDivergence(in[i], (*out)[j]), dists[i]);
166
0
      }
167
0
    }
168
0
    auto max_dist = std::max_element(dists.begin(), dists.end());
169
0
    if (*max_dist > 0.0f) {
170
0
      largest_idx = max_dist - dists.begin();
171
0
    }
172
0
  }
173
174
14.3k
  constexpr float kMinDistanceForDistinct = 48.0f;
175
121k
  while (out->size() < max_histograms) {
176
121k
    (*histogram_symbols)[largest_idx] = out->size();
177
121k
    out->push_back(in[largest_idx]);
178
121k
    dists[largest_idx] = 0.0f;
179
121k
    largest_idx = 0;
180
193M
    for (size_t i = 0; i < in.size(); i++) {
181
193M
      if (dists[i] == 0.0f) continue;
182
70.4M
      dists[i] = std::min(HistogramDistance(in[i], out->back()), dists[i]);
183
70.4M
      if (dists[i] > dists[largest_idx]) largest_idx = i;
184
70.4M
    }
185
121k
    if (dists[largest_idx] < kMinDistanceForDistinct) break;
186
121k
  }
187
188
13.1M
  for (size_t i = 0; i < in.size(); i++) {
189
13.1M
    if ((*histogram_symbols)[i] != max_histograms) continue;
190
1.84M
    size_t best = 0;
191
1.84M
    float best_dist = std::numeric_limits<float>::max();
192
69.7M
    for (size_t j = 0; j < out->size(); j++) {
193
67.9M
      float dist = j < prev_histograms ? HistogramKLDivergence(in[i], (*out)[j])
194
67.9M
                                       : HistogramDistance(in[i], (*out)[j]);
195
67.9M
      if (dist < best_dist) {
196
5.33M
        best = j;
197
5.33M
        best_dist = dist;
198
5.33M
      }
199
67.9M
    }
200
1.84M
    JXL_ENSURE(best_dist < std::numeric_limits<float>::max());
201
1.84M
    if (best >= prev_histograms) {
202
1.84M
      (*out)[best].AddHistogram(in[i]);
203
1.84M
      HistogramEntropy((*out)[best]);
204
1.84M
    }
205
1.84M
    (*histogram_symbols)[i] = best;
206
1.84M
  }
207
14.3k
  return true;
208
14.3k
}
Unexecuted instantiation: jxl::N_SSE4::FastClusterHistograms(std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> > const&, unsigned long, std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> >*, std::__1::vector<unsigned int, std::__1::allocator<unsigned int> >*)
jxl::N_AVX2::FastClusterHistograms(std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> > const&, unsigned long, std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> >*, std::__1::vector<unsigned int, std::__1::allocator<unsigned int> >*)
Line
Count
Source
138
14.3k
                             std::vector<uint32_t>* histogram_symbols) {
139
14.3k
  const size_t prev_histograms = out->size();
140
14.3k
  out->reserve(max_histograms);
141
14.3k
  histogram_symbols->clear();
142
14.3k
  histogram_symbols->resize(in.size(), max_histograms);
143
144
14.3k
  std::vector<float> dists(in.size(), std::numeric_limits<float>::max());
145
14.3k
  size_t largest_idx = 0;
146
13.1M
  for (size_t i = 0; i < in.size(); i++) {
147
13.1M
    if (in[i].total_count == 0) {
148
11.1M
      (*histogram_symbols)[i] = 0;
149
11.1M
      dists[i] = 0.0f;
150
11.1M
      continue;
151
11.1M
    }
152
1.96M
    HistogramEntropy(in[i]);
153
1.96M
    if (in[i].total_count > in[largest_idx].total_count) {
154
27.0k
      largest_idx = i;
155
27.0k
    }
156
1.96M
  }
157
158
14.3k
  if (prev_histograms > 0) {
159
0
    for (size_t j = 0; j < prev_histograms; ++j) {
160
0
      HistogramEntropy((*out)[j]);
161
0
    }
162
0
    for (size_t i = 0; i < in.size(); i++) {
163
0
      if (dists[i] == 0.0f) continue;
164
0
      for (size_t j = 0; j < prev_histograms; ++j) {
165
0
        dists[i] = std::min(HistogramKLDivergence(in[i], (*out)[j]), dists[i]);
166
0
      }
167
0
    }
168
0
    auto max_dist = std::max_element(dists.begin(), dists.end());
169
0
    if (*max_dist > 0.0f) {
170
0
      largest_idx = max_dist - dists.begin();
171
0
    }
172
0
  }
173
174
14.3k
  constexpr float kMinDistanceForDistinct = 48.0f;
175
121k
  while (out->size() < max_histograms) {
176
121k
    (*histogram_symbols)[largest_idx] = out->size();
177
121k
    out->push_back(in[largest_idx]);
178
121k
    dists[largest_idx] = 0.0f;
179
121k
    largest_idx = 0;
180
193M
    for (size_t i = 0; i < in.size(); i++) {
181
193M
      if (dists[i] == 0.0f) continue;
182
70.4M
      dists[i] = std::min(HistogramDistance(in[i], out->back()), dists[i]);
183
70.4M
      if (dists[i] > dists[largest_idx]) largest_idx = i;
184
70.4M
    }
185
121k
    if (dists[largest_idx] < kMinDistanceForDistinct) break;
186
121k
  }
187
188
13.1M
  for (size_t i = 0; i < in.size(); i++) {
189
13.1M
    if ((*histogram_symbols)[i] != max_histograms) continue;
190
1.84M
    size_t best = 0;
191
1.84M
    float best_dist = std::numeric_limits<float>::max();
192
69.7M
    for (size_t j = 0; j < out->size(); j++) {
193
67.9M
      float dist = j < prev_histograms ? HistogramKLDivergence(in[i], (*out)[j])
194
67.9M
                                       : HistogramDistance(in[i], (*out)[j]);
195
67.9M
      if (dist < best_dist) {
196
5.33M
        best = j;
197
5.33M
        best_dist = dist;
198
5.33M
      }
199
67.9M
    }
200
1.84M
    JXL_ENSURE(best_dist < std::numeric_limits<float>::max());
201
1.84M
    if (best >= prev_histograms) {
202
1.84M
      (*out)[best].AddHistogram(in[i]);
203
1.84M
      HistogramEntropy((*out)[best]);
204
1.84M
    }
205
1.84M
    (*histogram_symbols)[i] = best;
206
1.84M
  }
207
14.3k
  return true;
208
14.3k
}
Unexecuted instantiation: jxl::N_AVX3::FastClusterHistograms(std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> > const&, unsigned long, std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> >*, std::__1::vector<unsigned int, std::__1::allocator<unsigned int> >*)
Unexecuted instantiation: jxl::N_AVX3_ZEN4::FastClusterHistograms(std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> > const&, unsigned long, std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> >*, std::__1::vector<unsigned int, std::__1::allocator<unsigned int> >*)
Unexecuted instantiation: jxl::N_AVX3_SPR::FastClusterHistograms(std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> > const&, unsigned long, std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> >*, std::__1::vector<unsigned int, std::__1::allocator<unsigned int> >*)
Unexecuted instantiation: jxl::N_SSE2::FastClusterHistograms(std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> > const&, unsigned long, std::__1::vector<jxl::Histogram, std::__1::allocator<jxl::Histogram> >*, std::__1::vector<unsigned int, std::__1::allocator<unsigned int> >*)
209
210
// NOLINTNEXTLINE(google-readability-namespace-comments)
211
}  // namespace HWY_NAMESPACE
212
}  // namespace jxl
213
HWY_AFTER_NAMESPACE();
214
215
#if HWY_ONCE
216
namespace jxl {
217
HWY_EXPORT(FastClusterHistograms);  // Local function
218
HWY_EXPORT(HistogramEntropy);       // Local function
219
HWY_EXPORT(HistogramCondition);     // Local function
220
221
449k
void Histogram::Condition() { HWY_DYNAMIC_DISPATCH(HistogramCondition)(*this); }
222
223
9.91M
float Histogram::ShannonEntropy() const {
224
9.91M
  HWY_DYNAMIC_DISPATCH(HistogramEntropy)(*this);
225
9.91M
  return entropy;
226
9.91M
}
227
228
namespace {
229
// -----------------------------------------------------------------------------
230
// Histogram refinement
231
232
// Reorder histograms in *out so that the new symbols in *symbols come in
233
// increasing order.
234
void HistogramReindex(std::vector<Histogram>* out, size_t prev_histograms,
235
14.3k
                      std::vector<uint32_t>* symbols) {
236
14.3k
  std::vector<Histogram> tmp(*out);
237
14.3k
  std::map<int, int> new_index;
238
14.3k
  for (size_t i = 0; i < prev_histograms; ++i) {
239
0
    new_index[i] = i;
240
0
  }
241
14.3k
  int next_index = prev_histograms;
242
13.1M
  for (uint32_t symbol : *symbols) {
243
13.1M
    if (new_index.find(symbol) == new_index.end()) {
244
120k
      new_index[symbol] = next_index;
245
120k
      (*out)[next_index] = tmp[symbol];
246
120k
      ++next_index;
247
120k
    }
248
13.1M
  }
249
14.3k
  out->resize(next_index);
250
13.1M
  for (uint32_t& symbol : *symbols) {
251
13.1M
    symbol = new_index[symbol];
252
13.1M
  }
253
14.3k
}
254
255
}  // namespace
256
257
// Clusters similar histograms in 'in' together, the selected histograms are
258
// placed in 'out', and for each index in 'in', *histogram_symbols will
259
// indicate which of the 'out' histograms is the best approximation.
260
Status ClusterHistograms(const HistogramParams& params,
261
                         const std::vector<Histogram>& in,
262
                         size_t max_histograms, std::vector<Histogram>* out,
263
14.3k
                         std::vector<uint32_t>* histogram_symbols) {
264
14.3k
  size_t prev_histograms = out->size();
265
14.3k
  max_histograms = std::min(max_histograms, params.max_histograms);
266
14.3k
  max_histograms = std::min(max_histograms, in.size());
267
14.3k
  if (params.clustering == HistogramParams::ClusteringType::kFastest) {
268
0
    max_histograms = std::min(max_histograms, static_cast<size_t>(4));
269
0
  }
270
271
14.3k
  JXL_RETURN_IF_ERROR(HWY_DYNAMIC_DISPATCH(FastClusterHistograms)(
272
14.3k
      in, prev_histograms + max_histograms, out, histogram_symbols));
273
274
14.3k
  if (prev_histograms == 0 &&
275
14.3k
      params.clustering == HistogramParams::ClusteringType::kBest) {
276
14.4k
    for (auto& histo : *out) {
277
14.4k
      JXL_ASSIGN_OR_RETURN(histo.entropy, histo.ANSPopulationCost());
278
14.4k
    }
279
5.34k
    uint32_t next_version = 2;
280
5.34k
    std::vector<uint32_t> version(out->size(), 1);
281
5.34k
    std::vector<uint32_t> renumbering(out->size());
282
5.34k
    std::iota(renumbering.begin(), renumbering.end(), 0);
283
284
    // Try to pair up clusters if doing so reduces the total cost.
285
286
5.34k
    struct HistogramPair {
287
      // validity of a pair: p.version == max(version[i], version[j])
288
5.34k
      float cost;
289
5.34k
      uint32_t first;
290
5.34k
      uint32_t second;
291
5.34k
      uint32_t version;
292
      // We use > because priority queues sort in *decreasing* order, but we
293
      // want lower cost elements to appear first.
294
5.34k
      bool operator<(const HistogramPair& other) const {
295
3.19k
        return std::make_tuple(cost, first, second, version) >
296
3.19k
               std::make_tuple(other.cost, other.first, other.second,
297
3.19k
                               other.version);
298
3.19k
      }
299
5.34k
    };
300
301
    // Create list of all pairs by increasing merging cost.
302
5.34k
    std::priority_queue<HistogramPair> pairs_to_merge;
303
19.8k
    for (uint32_t i = 0; i < out->size(); i++) {
304
36.2k
      for (uint32_t j = i + 1; j < out->size(); j++) {
305
21.7k
        Histogram histo;
306
21.7k
        histo.AddHistogram((*out)[i]);
307
21.7k
        histo.AddHistogram((*out)[j]);
308
21.7k
        JXL_ASSIGN_OR_RETURN(float cost, histo.ANSPopulationCost());
309
21.7k
        cost -= (*out)[i].entropy + (*out)[j].entropy;
310
        // Avoid enqueueing pairs that are not advantageous to merge.
311
21.7k
        if (cost >= 0) continue;
312
1.36k
        pairs_to_merge.push(
313
1.36k
            HistogramPair{cost, i, j, std::max(version[i], version[j])});
314
1.36k
      }
315
14.4k
    }
316
317
    // Merge the best pair to merge, add new pairs that get formed as a
318
    // consequence.
319
6.92k
    while (!pairs_to_merge.empty()) {
320
1.57k
      uint32_t first = pairs_to_merge.top().first;
321
1.57k
      uint32_t second = pairs_to_merge.top().second;
322
1.57k
      uint32_t ver = pairs_to_merge.top().version;
323
1.57k
      pairs_to_merge.pop();
324
1.57k
      if (ver != std::max(version[first], version[second]) ||
325
1.57k
          version[first] == 0 || version[second] == 0) {
326
825
        continue;
327
825
      }
328
750
      (*out)[first].AddHistogram((*out)[second]);
329
750
      JXL_ASSIGN_OR_RETURN((*out)[first].entropy,
330
750
                           (*out)[first].ANSPopulationCost());
331
3.86k
      for (uint32_t& item : renumbering) {
332
3.86k
        if (item == second) {
333
808
          item = first;
334
808
        }
335
3.86k
      }
336
750
      version[second] = 0;
337
750
      version[first] = next_version++;
338
4.61k
      for (uint32_t j = 0; j < out->size(); j++) {
339
3.86k
        if (j == first) continue;
340
3.11k
        if (version[j] == 0) continue;
341
2.07k
        Histogram histo;
342
2.07k
        histo.AddHistogram((*out)[first]);
343
2.07k
        histo.AddHistogram((*out)[j]);
344
2.07k
        JXL_ASSIGN_OR_RETURN(float merge_cost, histo.ANSPopulationCost());
345
2.07k
        merge_cost -= (*out)[first].entropy + (*out)[j].entropy;
346
        // Avoid enqueueing pairs that are not advantageous to merge.
347
2.07k
        if (merge_cost >= 0) continue;
348
206
        pairs_to_merge.push(
349
206
            HistogramPair{merge_cost, std::min(first, j), std::max(first, j),
350
206
                          std::max(version[first], version[j])});
351
206
      }
352
750
    }
353
5.34k
    std::vector<uint32_t> reverse_renumbering(out->size(), -1);
354
5.34k
    size_t num_alive = 0;
355
19.8k
    for (size_t i = 0; i < out->size(); i++) {
356
14.4k
      if (version[i] == 0) continue;
357
13.7k
      (*out)[num_alive++] = (*out)[i];
358
13.7k
      reverse_renumbering[i] = num_alive - 1;
359
13.7k
    }
360
5.34k
    out->resize(num_alive);
361
29.5k
    for (uint32_t& item : *histogram_symbols) {
362
29.5k
      item = reverse_renumbering[renumbering[item]];
363
29.5k
    }
364
5.34k
  }
365
366
  // Convert the context map to a canonical form.
367
14.3k
  HistogramReindex(out, prev_histograms, histogram_symbols);
368
14.3k
  return true;
369
14.3k
}
370
371
}  // namespace jxl
372
#endif  // HWY_ONCE