Coverage Report

Created: 2026-03-31 06:56

next uncovered line (L), next uncovered region (R), next uncovered branch (B)
/src/libjxl/lib/jxl/splines.cc
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// Copyright (c) the JPEG XL Project Authors. All rights reserved.
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//
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// Use of this source code is governed by a BSD-style
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// license that can be found in the LICENSE file.
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#include "lib/jxl/splines.h"
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#include <jxl/memory_manager.h>
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#include <algorithm>
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#include <cinttypes>  // PRIu64
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#include <cmath>
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#include <cstddef>
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#include <cstdint>
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#include <cstring>
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#include <limits>
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#include <utility>
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#include <vector>
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#include "lib/jxl/base/bits.h"
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#include "lib/jxl/base/common.h"
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#include "lib/jxl/base/printf_macros.h"
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#include "lib/jxl/base/rect.h"
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#include "lib/jxl/base/status.h"
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#include "lib/jxl/chroma_from_luma.h"
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#include "lib/jxl/common.h"  // JXL_HIGH_PRECISION
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#include "lib/jxl/dct_scales.h"
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#include "lib/jxl/dec_ans.h"
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#include "lib/jxl/dec_bit_reader.h"
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#include "lib/jxl/image.h"
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#include "lib/jxl/pack_signed.h"
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#undef HWY_TARGET_INCLUDE
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#define HWY_TARGET_INCLUDE "lib/jxl/splines.cc"
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#include <hwy/foreach_target.h>
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#include <hwy/highway.h>
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#include "lib/jxl/base/fast_math-inl.h"
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HWY_BEFORE_NAMESPACE();
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namespace jxl {
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namespace HWY_NAMESPACE {
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namespace {
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// These templates are not found via ADL.
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using hwy::HWY_NAMESPACE::Mul;
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using hwy::HWY_NAMESPACE::MulAdd;
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using hwy::HWY_NAMESPACE::MulSub;
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using hwy::HWY_NAMESPACE::Sqrt;
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using hwy::HWY_NAMESPACE::Sub;
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// Given a set of DCT coefficients, this returns the result of performing cosine
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// interpolation on the original samples.
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254M
float ContinuousIDCT(const Dct32& dct, const float t) {
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  // We compute here the DCT-3 of the `dct` vector, rescaled by a factor of
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  // sqrt(32). This is such that an input vector vector {x, 0, ..., 0} produces
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  // a constant result of x. dct[0] was scaled in Dequantize() to allow uniform
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  // treatment of all the coefficients.
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254M
  constexpr float kMultipliers[32] = {
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254M
      kPi / 32 * 0,  kPi / 32 * 1,  kPi / 32 * 2,  kPi / 32 * 3,  kPi / 32 * 4,
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254M
      kPi / 32 * 5,  kPi / 32 * 6,  kPi / 32 * 7,  kPi / 32 * 8,  kPi / 32 * 9,
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254M
      kPi / 32 * 10, kPi / 32 * 11, kPi / 32 * 12, kPi / 32 * 13, kPi / 32 * 14,
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254M
      kPi / 32 * 15, kPi / 32 * 16, kPi / 32 * 17, kPi / 32 * 18, kPi / 32 * 19,
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254M
      kPi / 32 * 20, kPi / 32 * 21, kPi / 32 * 22, kPi / 32 * 23, kPi / 32 * 24,
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254M
      kPi / 32 * 25, kPi / 32 * 26, kPi / 32 * 27, kPi / 32 * 28, kPi / 32 * 29,
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254M
      kPi / 32 * 30, kPi / 32 * 31,
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254M
  };
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254M
  HWY_CAPPED(float, 32) df;
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254M
  auto result = Zero(df);
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254M
  const auto tandhalf = Set(df, t + 0.5f);
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1.27G
  for (int i = 0; i < 32; i += Lanes(df)) {
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1.01G
    auto cos_arg = Mul(LoadU(df, kMultipliers + i), tandhalf);
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1.01G
    auto cos = FastCosf(df, cos_arg);
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1.01G
    auto local_res = Mul(LoadU(df, dct.data() + i), cos);
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1.01G
    result = MulAdd(Set(df, kSqrt2), local_res, result);
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1.01G
  }
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254M
  return GetLane(SumOfLanes(df, result));
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254M
}
splines.cc:jxl::N_AVX2::(anonymous namespace)::ContinuousIDCT(std::__1::array<float, 32ul> const&, float)
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254M
float ContinuousIDCT(const Dct32& dct, const float t) {
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  // We compute here the DCT-3 of the `dct` vector, rescaled by a factor of
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  // sqrt(32). This is such that an input vector vector {x, 0, ..., 0} produces
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  // a constant result of x. dct[0] was scaled in Dequantize() to allow uniform
57
  // treatment of all the coefficients.
58
254M
  constexpr float kMultipliers[32] = {
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254M
      kPi / 32 * 0,  kPi / 32 * 1,  kPi / 32 * 2,  kPi / 32 * 3,  kPi / 32 * 4,
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254M
      kPi / 32 * 5,  kPi / 32 * 6,  kPi / 32 * 7,  kPi / 32 * 8,  kPi / 32 * 9,
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254M
      kPi / 32 * 10, kPi / 32 * 11, kPi / 32 * 12, kPi / 32 * 13, kPi / 32 * 14,
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254M
      kPi / 32 * 15, kPi / 32 * 16, kPi / 32 * 17, kPi / 32 * 18, kPi / 32 * 19,
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254M
      kPi / 32 * 20, kPi / 32 * 21, kPi / 32 * 22, kPi / 32 * 23, kPi / 32 * 24,
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254M
      kPi / 32 * 25, kPi / 32 * 26, kPi / 32 * 27, kPi / 32 * 28, kPi / 32 * 29,
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254M
      kPi / 32 * 30, kPi / 32 * 31,
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254M
  };
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254M
  HWY_CAPPED(float, 32) df;
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254M
  auto result = Zero(df);
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254M
  const auto tandhalf = Set(df, t + 0.5f);
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1.27G
  for (int i = 0; i < 32; i += Lanes(df)) {
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1.01G
    auto cos_arg = Mul(LoadU(df, kMultipliers + i), tandhalf);
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1.01G
    auto cos = FastCosf(df, cos_arg);
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1.01G
    auto local_res = Mul(LoadU(df, dct.data() + i), cos);
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1.01G
    result = MulAdd(Set(df, kSqrt2), local_res, result);
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1.01G
  }
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254M
  return GetLane(SumOfLanes(df, result));
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254M
}
Unexecuted instantiation: splines.cc:jxl::N_SSE4::(anonymous namespace)::ContinuousIDCT(std::__1::array<float, 32ul> const&, float)
Unexecuted instantiation: splines.cc:jxl::N_SSE2::(anonymous namespace)::ContinuousIDCT(std::__1::array<float, 32ul> const&, float)
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template <typename DF>
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void DrawSegment(DF df, const SplineSegment& segment, const bool add,
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                 const size_t y, const size_t x, const size_t x0,
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2.39M
                 float* JXL_RESTRICT rows[3]) {
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2.39M
  Rebind<int32_t, DF> di;
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2.39M
  const auto inv_sigma = Set(df, segment.inv_sigma);
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2.39M
  const auto half = Set(df, 0.5f);
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2.39M
  const auto one_over_2s2 = Set(df, 0.353553391f);
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2.39M
  const auto sigma_over_4_times_intensity =
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2.39M
      Set(df, segment.sigma_over_4_times_intensity);
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2.39M
  const auto dx =
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      Sub(ConvertTo(df, Iota(di, x + x0)), Set(df, segment.center_x));
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2.39M
  const auto dy = Set(df, y - segment.center_y);
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2.39M
  const auto sqd = MulAdd(dx, dx, Mul(dy, dy));
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2.39M
  const auto distance = Sqrt(sqd);
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2.39M
  const auto one_dimensional_factor =
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2.39M
      Sub(FastErff(df, Mul(MulAdd(distance, half, one_over_2s2), inv_sigma)),
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          FastErff(df, Mul(MulSub(distance, half, one_over_2s2), inv_sigma)));
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2.39M
  auto local_intensity =
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2.39M
      Mul(sigma_over_4_times_intensity,
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2.39M
          Mul(one_dimensional_factor, one_dimensional_factor));
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9.58M
  for (size_t c = 0; c < 3; ++c) {
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7.19M
    const auto cm = Set(df, add ? segment.color[c] : -segment.color[c]);
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7.19M
    const auto in = LoadU(df, rows[c] + x);
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7.19M
    StoreU(MulAdd(cm, local_intensity, in), df, rows[c] + x);
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  }
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2.39M
}
splines.cc:void jxl::N_AVX2::(anonymous namespace)::DrawSegment<hwy::N_AVX2::Simd<float, 8ul, 0> >(hwy::N_AVX2::Simd<float, 8ul, 0>, jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
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1.15M
                 float* JXL_RESTRICT rows[3]) {
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1.15M
  Rebind<int32_t, DF> di;
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1.15M
  const auto inv_sigma = Set(df, segment.inv_sigma);
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1.15M
  const auto half = Set(df, 0.5f);
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1.15M
  const auto one_over_2s2 = Set(df, 0.353553391f);
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1.15M
  const auto sigma_over_4_times_intensity =
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1.15M
      Set(df, segment.sigma_over_4_times_intensity);
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1.15M
  const auto dx =
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1.15M
      Sub(ConvertTo(df, Iota(di, x + x0)), Set(df, segment.center_x));
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1.15M
  const auto dy = Set(df, y - segment.center_y);
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1.15M
  const auto sqd = MulAdd(dx, dx, Mul(dy, dy));
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1.15M
  const auto distance = Sqrt(sqd);
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1.15M
  const auto one_dimensional_factor =
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1.15M
      Sub(FastErff(df, Mul(MulAdd(distance, half, one_over_2s2), inv_sigma)),
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1.15M
          FastErff(df, Mul(MulSub(distance, half, one_over_2s2), inv_sigma)));
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1.15M
  auto local_intensity =
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      Mul(sigma_over_4_times_intensity,
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1.15M
          Mul(one_dimensional_factor, one_dimensional_factor));
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4.61M
  for (size_t c = 0; c < 3; ++c) {
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3.46M
    const auto cm = Set(df, add ? segment.color[c] : -segment.color[c]);
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    const auto in = LoadU(df, rows[c] + x);
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3.46M
    StoreU(MulAdd(cm, local_intensity, in), df, rows[c] + x);
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  }
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}
splines.cc:void jxl::N_AVX2::(anonymous namespace)::DrawSegment<hwy::N_AVX2::Simd<float, 1ul, 0> >(hwy::N_AVX2::Simd<float, 1ul, 0>, jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
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82
1.24M
                 float* JXL_RESTRICT rows[3]) {
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1.24M
  Rebind<int32_t, DF> di;
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1.24M
  const auto inv_sigma = Set(df, segment.inv_sigma);
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1.24M
  const auto half = Set(df, 0.5f);
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1.24M
  const auto one_over_2s2 = Set(df, 0.353553391f);
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1.24M
  const auto sigma_over_4_times_intensity =
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1.24M
      Set(df, segment.sigma_over_4_times_intensity);
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1.24M
  const auto dx =
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1.24M
      Sub(ConvertTo(df, Iota(di, x + x0)), Set(df, segment.center_x));
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1.24M
  const auto dy = Set(df, y - segment.center_y);
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1.24M
  const auto sqd = MulAdd(dx, dx, Mul(dy, dy));
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1.24M
  const auto distance = Sqrt(sqd);
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1.24M
  const auto one_dimensional_factor =
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1.24M
      Sub(FastErff(df, Mul(MulAdd(distance, half, one_over_2s2), inv_sigma)),
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1.24M
          FastErff(df, Mul(MulSub(distance, half, one_over_2s2), inv_sigma)));
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1.24M
  auto local_intensity =
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1.24M
      Mul(sigma_over_4_times_intensity,
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1.24M
          Mul(one_dimensional_factor, one_dimensional_factor));
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4.97M
  for (size_t c = 0; c < 3; ++c) {
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3.72M
    const auto cm = Set(df, add ? segment.color[c] : -segment.color[c]);
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3.72M
    const auto in = LoadU(df, rows[c] + x);
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3.72M
    StoreU(MulAdd(cm, local_intensity, in), df, rows[c] + x);
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3.72M
  }
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1.24M
}
Unexecuted instantiation: splines.cc:void jxl::N_SSE4::(anonymous namespace)::DrawSegment<hwy::N_SSE4::Simd<float, 4ul, 0> >(hwy::N_SSE4::Simd<float, 4ul, 0>, jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
Unexecuted instantiation: splines.cc:void jxl::N_SSE4::(anonymous namespace)::DrawSegment<hwy::N_SSE4::Simd<float, 1ul, 0> >(hwy::N_SSE4::Simd<float, 1ul, 0>, jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
Unexecuted instantiation: splines.cc:void jxl::N_SSE2::(anonymous namespace)::DrawSegment<hwy::N_SSE2::Simd<float, 4ul, 0> >(hwy::N_SSE2::Simd<float, 4ul, 0>, jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
Unexecuted instantiation: splines.cc:void jxl::N_SSE2::(anonymous namespace)::DrawSegment<hwy::N_SSE2::Simd<float, 1ul, 0> >(hwy::N_SSE2::Simd<float, 1ul, 0>, jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
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void DrawSegment(const SplineSegment& segment, const bool add, const size_t y,
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                 const size_t x0, const size_t x1,
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466k
                 float* JXL_RESTRICT rows[3]) {
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466k
  ptrdiff_t start = std::llround(segment.center_x - segment.maximum_distance);
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466k
  ptrdiff_t end = std::llround(segment.center_x + segment.maximum_distance);
112
466k
  if (end < static_cast<ptrdiff_t>(x0) || start >= static_cast<ptrdiff_t>(x1)) {
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111k
    return;  // span does not intersect scan
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111k
  }
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354k
  size_t span_x0 = std::max<ptrdiff_t>(x0, start) - x0;
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354k
  size_t span_x1 = std::min<ptrdiff_t>(x1, end + 1) - x0;  // exclusive
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354k
  HWY_FULL(float) df;
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354k
  size_t x = span_x0;
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1.50M
  for (; x + Lanes(df) <= span_x1; x += Lanes(df)) {
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1.15M
    DrawSegment(df, segment, add, y, x, x0, rows);
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1.15M
  }
122
1.59M
  for (; x < span_x1; ++x) {
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1.24M
    DrawSegment(HWY_CAPPED(float, 1)(), segment, add, y, x, x0, rows);
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1.24M
  }
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354k
}
splines.cc:jxl::N_AVX2::(anonymous namespace)::DrawSegment(jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
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109
466k
                 float* JXL_RESTRICT rows[3]) {
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466k
  ptrdiff_t start = std::llround(segment.center_x - segment.maximum_distance);
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466k
  ptrdiff_t end = std::llround(segment.center_x + segment.maximum_distance);
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466k
  if (end < static_cast<ptrdiff_t>(x0) || start >= static_cast<ptrdiff_t>(x1)) {
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111k
    return;  // span does not intersect scan
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111k
  }
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354k
  size_t span_x0 = std::max<ptrdiff_t>(x0, start) - x0;
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354k
  size_t span_x1 = std::min<ptrdiff_t>(x1, end + 1) - x0;  // exclusive
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354k
  HWY_FULL(float) df;
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354k
  size_t x = span_x0;
119
1.50M
  for (; x + Lanes(df) <= span_x1; x += Lanes(df)) {
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1.15M
    DrawSegment(df, segment, add, y, x, x0, rows);
121
1.15M
  }
122
1.59M
  for (; x < span_x1; ++x) {
123
1.24M
    DrawSegment(HWY_CAPPED(float, 1)(), segment, add, y, x, x0, rows);
124
1.24M
  }
125
354k
}
Unexecuted instantiation: splines.cc:jxl::N_SSE4::(anonymous namespace)::DrawSegment(jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
Unexecuted instantiation: splines.cc:jxl::N_SSE2::(anonymous namespace)::DrawSegment(jxl::SplineSegment const&, bool, unsigned long, unsigned long, unsigned long, float* restrict*)
126
127
void ComputeSegments(const Spline::Point& center, const float intensity,
128
                     const float color[3], const float sigma,
129
                     std::vector<SplineSegment>& segments,
130
63.5M
                     std::vector<std::pair<size_t, size_t>>& segments_by_y) {
131
  // Sanity check sigma, inverse sigma and intensity
132
63.5M
  if (!(std::isfinite(sigma) && sigma != 0.0f && std::isfinite(1.0f / sigma) &&
133
63.5M
        std::isfinite(intensity))) {
134
1.51k
    return;
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1.51k
  }
136
63.5M
#if JXL_HIGH_PRECISION
137
63.5M
  constexpr float kDistanceExp = 5;
138
#else
139
  // About 30% faster.
140
  constexpr float kDistanceExp = 3;
141
#endif
142
  // We cap from below colors to at least 0.01.
143
63.5M
  float max_color = 0.01f;
144
254M
  for (size_t c = 0; c < 3; c++) {
145
190M
    max_color = std::max(max_color, std::abs(color[c] * intensity));
146
190M
  }
147
  // Distance beyond which max_color*intensity*exp(-d^2 / (2 * sigma^2)) drops
148
  // below 10^-kDistanceExp.
149
63.5M
  const float maximum_distance =
150
63.5M
      std::sqrt(-2.0f * sigma * sigma *
151
63.5M
                (std::log(0.1f) * kDistanceExp - std::log(max_color)));
152
63.5M
  SplineSegment segment;
153
63.5M
  segment.center_y = center.y;
154
63.5M
  segment.center_x = center.x;
155
63.5M
  memcpy(segment.color, color, sizeof(segment.color));
156
63.5M
  segment.inv_sigma = 1.0f / sigma;
157
63.5M
  segment.sigma_over_4_times_intensity = .25f * sigma * intensity;
158
63.5M
  segment.maximum_distance = maximum_distance;
159
63.5M
  ptrdiff_t y0 = std::llround(center.y - maximum_distance);
160
63.5M
  ptrdiff_t y1 =
161
63.5M
      std::llround(center.y + maximum_distance) + 1;  // one-past-the-end
162
168M
  for (ptrdiff_t y = std::max<ptrdiff_t>(y0, 0); y < y1; y++) {
163
104M
    segments_by_y.emplace_back(y, segments.size());
164
104M
  }
165
63.5M
  segments.push_back(segment);
166
63.5M
}
splines.cc:jxl::N_AVX2::(anonymous namespace)::ComputeSegments(jxl::Spline::Point const&, float, float const*, float, std::__1::vector<jxl::SplineSegment, std::__1::allocator<jxl::SplineSegment> >&, std::__1::vector<std::__1::pair<unsigned long, unsigned long>, std::__1::allocator<std::__1::pair<unsigned long, unsigned long> > >&)
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130
63.5M
                     std::vector<std::pair<size_t, size_t>>& segments_by_y) {
131
  // Sanity check sigma, inverse sigma and intensity
132
63.5M
  if (!(std::isfinite(sigma) && sigma != 0.0f && std::isfinite(1.0f / sigma) &&
133
63.5M
        std::isfinite(intensity))) {
134
1.51k
    return;
135
1.51k
  }
136
63.5M
#if JXL_HIGH_PRECISION
137
63.5M
  constexpr float kDistanceExp = 5;
138
#else
139
  // About 30% faster.
140
  constexpr float kDistanceExp = 3;
141
#endif
142
  // We cap from below colors to at least 0.01.
143
63.5M
  float max_color = 0.01f;
144
254M
  for (size_t c = 0; c < 3; c++) {
145
190M
    max_color = std::max(max_color, std::abs(color[c] * intensity));
146
190M
  }
147
  // Distance beyond which max_color*intensity*exp(-d^2 / (2 * sigma^2)) drops
148
  // below 10^-kDistanceExp.
149
63.5M
  const float maximum_distance =
150
63.5M
      std::sqrt(-2.0f * sigma * sigma *
151
63.5M
                (std::log(0.1f) * kDistanceExp - std::log(max_color)));
152
63.5M
  SplineSegment segment;
153
63.5M
  segment.center_y = center.y;
154
63.5M
  segment.center_x = center.x;
155
63.5M
  memcpy(segment.color, color, sizeof(segment.color));
156
63.5M
  segment.inv_sigma = 1.0f / sigma;
157
63.5M
  segment.sigma_over_4_times_intensity = .25f * sigma * intensity;
158
63.5M
  segment.maximum_distance = maximum_distance;
159
63.5M
  ptrdiff_t y0 = std::llround(center.y - maximum_distance);
160
63.5M
  ptrdiff_t y1 =
161
63.5M
      std::llround(center.y + maximum_distance) + 1;  // one-past-the-end
162
168M
  for (ptrdiff_t y = std::max<ptrdiff_t>(y0, 0); y < y1; y++) {
163
104M
    segments_by_y.emplace_back(y, segments.size());
164
104M
  }
165
63.5M
  segments.push_back(segment);
166
63.5M
}
Unexecuted instantiation: splines.cc:jxl::N_SSE4::(anonymous namespace)::ComputeSegments(jxl::Spline::Point const&, float, float const*, float, std::__1::vector<jxl::SplineSegment, std::__1::allocator<jxl::SplineSegment> >&, std::__1::vector<std::__1::pair<unsigned long, unsigned long>, std::__1::allocator<std::__1::pair<unsigned long, unsigned long> > >&)
Unexecuted instantiation: splines.cc:jxl::N_SSE2::(anonymous namespace)::ComputeSegments(jxl::Spline::Point const&, float, float const*, float, std::__1::vector<jxl::SplineSegment, std::__1::allocator<jxl::SplineSegment> >&, std::__1::vector<std::__1::pair<unsigned long, unsigned long>, std::__1::allocator<std::__1::pair<unsigned long, unsigned long> > >&)
167
168
void DrawSegments(float* JXL_RESTRICT row_x, float* JXL_RESTRICT row_y,
169
                  float* JXL_RESTRICT row_b, size_t y, size_t x0, size_t x1,
170
                  const bool add, const SplineSegment* segments,
171
                  const size_t* segment_indices,
172
24.3k
                  const size_t* segment_y_start) {
173
24.3k
  float* JXL_RESTRICT rows[3] = {row_x, row_y, row_b};
174
490k
  for (size_t i = segment_y_start[y]; i < segment_y_start[y + 1]; i++) {
175
466k
    DrawSegment(segments[segment_indices[i]], add, y, x0, x1, rows);
176
466k
  }
177
24.3k
}
splines.cc:jxl::N_AVX2::(anonymous namespace)::DrawSegments(float*, float*, float*, unsigned long, unsigned long, unsigned long, bool, jxl::SplineSegment const*, unsigned long const*, unsigned long const*)
Line
Count
Source
172
24.3k
                  const size_t* segment_y_start) {
173
24.3k
  float* JXL_RESTRICT rows[3] = {row_x, row_y, row_b};
174
490k
  for (size_t i = segment_y_start[y]; i < segment_y_start[y + 1]; i++) {
175
466k
    DrawSegment(segments[segment_indices[i]], add, y, x0, x1, rows);
176
466k
  }
177
24.3k
}
Unexecuted instantiation: splines.cc:jxl::N_SSE4::(anonymous namespace)::DrawSegments(float*, float*, float*, unsigned long, unsigned long, unsigned long, bool, jxl::SplineSegment const*, unsigned long const*, unsigned long const*)
Unexecuted instantiation: splines.cc:jxl::N_SSE2::(anonymous namespace)::DrawSegments(float*, float*, float*, unsigned long, unsigned long, unsigned long, bool, jxl::SplineSegment const*, unsigned long const*, unsigned long const*)
178
179
void SegmentsFromPoints(
180
    const Spline& spline,
181
    const std::vector<std::pair<Spline::Point, float>>& points_to_draw,
182
    const float arc_length, std::vector<SplineSegment>& segments,
183
4.60k
    std::vector<std::pair<size_t, size_t>>& segments_by_y) {
184
4.60k
  const float inv_arc_length = 1.0f / arc_length;
185
4.60k
  int k = 0;
186
63.5M
  for (const auto& point_to_draw : points_to_draw) {
187
63.5M
    const Spline::Point& point = point_to_draw.first;
188
63.5M
    const float multiplier = point_to_draw.second;
189
63.5M
    const float progress_along_arc =
190
63.5M
        std::min(1.f, (k * kDesiredRenderingDistance) * inv_arc_length);
191
63.5M
    ++k;
192
63.5M
    float color[3];
193
254M
    for (size_t c = 0; c < 3; ++c) {
194
190M
      color[c] =
195
190M
          ContinuousIDCT(spline.color_dct[c], (32 - 1) * progress_along_arc);
196
190M
    }
197
63.5M
    const float sigma =
198
63.5M
        ContinuousIDCT(spline.sigma_dct, (32 - 1) * progress_along_arc);
199
63.5M
    ComputeSegments(point, multiplier, color, sigma, segments, segments_by_y);
200
63.5M
  }
201
4.60k
}
splines.cc:jxl::N_AVX2::(anonymous namespace)::SegmentsFromPoints(jxl::Spline const&, std::__1::vector<std::__1::pair<jxl::Spline::Point, float>, std::__1::allocator<std::__1::pair<jxl::Spline::Point, float> > > const&, float, std::__1::vector<jxl::SplineSegment, std::__1::allocator<jxl::SplineSegment> >&, std::__1::vector<std::__1::pair<unsigned long, unsigned long>, std::__1::allocator<std::__1::pair<unsigned long, unsigned long> > >&)
Line
Count
Source
183
4.60k
    std::vector<std::pair<size_t, size_t>>& segments_by_y) {
184
4.60k
  const float inv_arc_length = 1.0f / arc_length;
185
4.60k
  int k = 0;
186
63.5M
  for (const auto& point_to_draw : points_to_draw) {
187
63.5M
    const Spline::Point& point = point_to_draw.first;
188
63.5M
    const float multiplier = point_to_draw.second;
189
63.5M
    const float progress_along_arc =
190
63.5M
        std::min(1.f, (k * kDesiredRenderingDistance) * inv_arc_length);
191
63.5M
    ++k;
192
63.5M
    float color[3];
193
254M
    for (size_t c = 0; c < 3; ++c) {
194
190M
      color[c] =
195
190M
          ContinuousIDCT(spline.color_dct[c], (32 - 1) * progress_along_arc);
196
190M
    }
197
63.5M
    const float sigma =
198
63.5M
        ContinuousIDCT(spline.sigma_dct, (32 - 1) * progress_along_arc);
199
63.5M
    ComputeSegments(point, multiplier, color, sigma, segments, segments_by_y);
200
63.5M
  }
201
4.60k
}
Unexecuted instantiation: splines.cc:jxl::N_SSE4::(anonymous namespace)::SegmentsFromPoints(jxl::Spline const&, std::__1::vector<std::__1::pair<jxl::Spline::Point, float>, std::__1::allocator<std::__1::pair<jxl::Spline::Point, float> > > const&, float, std::__1::vector<jxl::SplineSegment, std::__1::allocator<jxl::SplineSegment> >&, std::__1::vector<std::__1::pair<unsigned long, unsigned long>, std::__1::allocator<std::__1::pair<unsigned long, unsigned long> > >&)
Unexecuted instantiation: splines.cc:jxl::N_SSE2::(anonymous namespace)::SegmentsFromPoints(jxl::Spline const&, std::__1::vector<std::__1::pair<jxl::Spline::Point, float>, std::__1::allocator<std::__1::pair<jxl::Spline::Point, float> > > const&, float, std::__1::vector<jxl::SplineSegment, std::__1::allocator<jxl::SplineSegment> >&, std::__1::vector<std::__1::pair<unsigned long, unsigned long>, std::__1::allocator<std::__1::pair<unsigned long, unsigned long> > >&)
202
}  // namespace
203
// NOLINTNEXTLINE(google-readability-namespace-comments)
204
}  // namespace HWY_NAMESPACE
205
}  // namespace jxl
206
HWY_AFTER_NAMESPACE();
207
208
#if HWY_ONCE
209
namespace jxl {
210
HWY_EXPORT(SegmentsFromPoints);
211
HWY_EXPORT(DrawSegments);
212
213
namespace {
214
215
// It is not in spec, but reasonable limit to avoid overflows.
216
template <typename T>
217
276k
Status ValidateSplinePointPos(const T& x, const T& y) {
218
276k
  constexpr T kSplinePosLimit = 1u << 23;
219
276k
  if ((x >= kSplinePosLimit) || (x <= -kSplinePosLimit) ||
220
276k
      (y >= kSplinePosLimit) || (y <= -kSplinePosLimit)) {
221
82
    return JXL_FAILURE("Spline coordinates out of bounds");
222
82
  }
223
276k
  return true;
224
276k
}
splines.cc:jxl::Status jxl::(anonymous namespace)::ValidateSplinePointPos<long>(long const&, long const&)
Line
Count
Source
217
89.5k
Status ValidateSplinePointPos(const T& x, const T& y) {
218
89.5k
  constexpr T kSplinePosLimit = 1u << 23;
219
89.5k
  if ((x >= kSplinePosLimit) || (x <= -kSplinePosLimit) ||
220
89.5k
      (y >= kSplinePosLimit) || (y <= -kSplinePosLimit)) {
221
61
    return JXL_FAILURE("Spline coordinates out of bounds");
222
61
  }
223
89.4k
  return true;
224
89.5k
}
splines.cc:jxl::Status jxl::(anonymous namespace)::ValidateSplinePointPos<float>(float const&, float const&)
Line
Count
Source
217
9.60k
Status ValidateSplinePointPos(const T& x, const T& y) {
218
9.60k
  constexpr T kSplinePosLimit = 1u << 23;
219
9.60k
  if ((x >= kSplinePosLimit) || (x <= -kSplinePosLimit) ||
220
9.60k
      (y >= kSplinePosLimit) || (y <= -kSplinePosLimit)) {
221
0
    return JXL_FAILURE("Spline coordinates out of bounds");
222
0
  }
223
9.60k
  return true;
224
9.60k
}
splines.cc:jxl::Status jxl::(anonymous namespace)::ValidateSplinePointPos<int>(int const&, int const&)
Line
Count
Source
217
177k
Status ValidateSplinePointPos(const T& x, const T& y) {
218
177k
  constexpr T kSplinePosLimit = 1u << 23;
219
177k
  if ((x >= kSplinePosLimit) || (x <= -kSplinePosLimit) ||
220
177k
      (y >= kSplinePosLimit) || (y <= -kSplinePosLimit)) {
221
21
    return JXL_FAILURE("Spline coordinates out of bounds");
222
21
  }
223
177k
  return true;
224
177k
}
225
226
// Maximum number of spline control points per frame is
227
//   std::min(kMaxNumControlPoints, xsize * ysize / 2)
228
constexpr size_t kMaxNumControlPoints = 1u << 20u;
229
constexpr size_t kMaxNumControlPointsPerPixelRatio = 2;
230
231
0
float AdjustedQuant(const int32_t adjustment) {
232
0
  return (adjustment >= 0) ? (1.f + .125f * adjustment)
233
0
                           : 1.f / (1.f - .125f * adjustment);
234
0
}
235
236
9.58k
float InvAdjustedQuant(const int32_t adjustment) {
237
9.58k
  return (adjustment >= 0) ? 1.f / (1.f + .125f * adjustment)
238
9.58k
                           : (1.f - .125f * adjustment);
239
9.58k
}
240
241
// X, Y, B, sigma.
242
constexpr float kChannelWeight[] = {0.0042f, 0.075f, 0.07f, .3333f};
243
244
Status DecodeAllStartingPoints(std::vector<Spline::Point>* const points,
245
                               BitReader* const br, ANSSymbolReader* reader,
246
                               const std::vector<uint8_t>& context_map,
247
4.00k
                               const size_t num_splines) {
248
4.00k
  points->clear();
249
4.00k
  points->reserve(num_splines);
250
4.00k
  int64_t last_x = 0;
251
4.00k
  int64_t last_y = 0;
252
93.5k
  for (size_t i = 0; i < num_splines; i++) {
253
89.5k
    size_t dx =
254
89.5k
        reader->ReadHybridUint(kStartingPositionContext, br, context_map);
255
89.5k
    size_t dy =
256
89.5k
        reader->ReadHybridUint(kStartingPositionContext, br, context_map);
257
89.5k
    int64_t x;
258
89.5k
    int64_t y;
259
89.5k
    if (i != 0) {
260
85.5k
      x = UnpackSigned(dx) + last_x;
261
85.5k
      y = UnpackSigned(dy) + last_y;
262
85.5k
    } else {
263
4.00k
      x = dx;
264
4.00k
      y = dy;
265
4.00k
    }
266
89.5k
    JXL_RETURN_IF_ERROR(ValidateSplinePointPos(x, y));
267
89.4k
    points->emplace_back(static_cast<float>(x), static_cast<float>(y));
268
89.4k
    last_x = x;
269
89.4k
    last_y = y;
270
89.4k
  }
271
3.94k
  return true;
272
4.00k
}
273
274
struct Vector {
275
  float x, y;
276
0
  Vector operator-() const { return {-x, -y}; }
277
0
  Vector operator+(const Vector& other) const {
278
0
    return {x + other.x, y + other.y};
279
0
  }
280
64.8M
  float SquaredNorm() const { return x * x + y * y; }
281
};
282
70.7M
Vector operator*(const float k, const Vector& vec) {
283
70.7M
  return {k * vec.x, k * vec.y};
284
70.7M
}
285
286
70.8M
Spline::Point operator+(const Spline::Point& p, const Vector& vec) {
287
70.8M
  return {p.x + vec.x, p.y + vec.y};
288
70.8M
}
289
135M
Vector operator-(const Spline::Point& a, const Spline::Point& b) {
290
135M
  return {a.x - b.x, a.y - b.y};
291
135M
}
292
293
// TODO(eustas): avoid making a copy of "points".
294
void DrawCentripetalCatmullRomSpline(std::vector<Spline::Point> points,
295
9.46k
                                     std::vector<Spline::Point>& result) {
296
9.46k
  if (points.empty()) return;
297
9.46k
  if (points.size() == 1) {
298
4.86k
    result.push_back(points[0]);
299
4.86k
    return;
300
4.86k
  }
301
  // Number of points to compute between each control point.
302
4.60k
  static constexpr int kNumPoints = 16;
303
4.60k
  result.reserve((points.size() - 1) * kNumPoints + 1);
304
4.60k
  points.insert(points.begin(), points[0] + (points[0] - points[1]));
305
4.60k
  points.push_back(points[points.size() - 1] +
306
4.60k
                   (points[points.size() - 1] - points[points.size() - 2]));
307
  // points has at least 4 elements at this point.
308
85.0k
  for (size_t start = 0; start < points.size() - 3; ++start) {
309
    // 4 of them are used, and we draw from p[1] to p[2].
310
80.4k
    const Spline::Point* const p = &points[start];
311
80.4k
    result.push_back(p[1]);
312
80.4k
    float d[3];
313
80.4k
    float t[4];
314
80.4k
    t[0] = 0;
315
321k
    for (int k = 0; k < 3; ++k) {
316
      // TODO(eustas): for each segment delta is calculated 3 times...
317
      // TODO(eustas): restrict d[k] with reasonable limit and spec it.
318
241k
      d[k] = std::sqrt(hypotf(p[k + 1].x - p[k].x, p[k + 1].y - p[k].y));
319
241k
      t[k + 1] = t[k] + d[k];
320
241k
    }
321
1.28M
    for (int i = 1; i < kNumPoints; ++i) {
322
1.20M
      const float tt = d[0] + (static_cast<float>(i) / kNumPoints) * d[1];
323
1.20M
      Spline::Point a[3];
324
4.82M
      for (int k = 0; k < 3; ++k) {
325
        // TODO(eustas): reciprocal multiplication would be faster.
326
3.61M
        a[k] = p[k] + ((tt - t[k]) / d[k]) * (p[k + 1] - p[k]);
327
3.61M
      }
328
1.20M
      Spline::Point b[2];
329
3.61M
      for (int k = 0; k < 2; ++k) {
330
2.41M
        b[k] = a[k] + ((tt - t[k]) / (d[k] + d[k + 1])) * (a[k + 1] - a[k]);
331
2.41M
      }
332
1.20M
      result.push_back(b[0] + ((tt - t[1]) / d[1]) * (b[1] - b[0]));
333
1.20M
    }
334
80.4k
  }
335
4.60k
  result.push_back(points[points.size() - 2]);
336
4.60k
}
337
338
// Move along the line segments defined by `points`, `kDesiredRenderingDistance`
339
// pixels at a time, and call `functor` with each point and the actual distance
340
// to the previous point (which will always be kDesiredRenderingDistance except
341
// possibly for the very last point).
342
// TODO(eustas): this method always adds the last point, but never the first
343
//               (unless those are one); I believe both ends matter.
344
template <typename Points, typename Functor>
345
9.46k
Status ForEachEquallySpacedPoint(const Points& points, const Functor& functor) {
346
9.46k
  JXL_ENSURE(!points.empty());
347
9.46k
  Spline::Point current = points.front();
348
9.46k
  functor(current, kDesiredRenderingDistance);
349
9.46k
  auto next = points.begin();
350
63.5M
  while (next != points.end()) {
351
63.5M
    const Spline::Point* previous = &current;
352
63.5M
    float arclength_from_previous = 0.f;
353
64.8M
    for (;;) {
354
64.8M
      if (next == points.end()) {
355
9.46k
        functor(*previous, arclength_from_previous);
356
9.46k
        return true;
357
9.46k
      }
358
64.8M
      const float arclength_to_next =
359
64.8M
          std::sqrt((*next - *previous).SquaredNorm());
360
64.8M
      if (arclength_from_previous + arclength_to_next >=
361
64.8M
          kDesiredRenderingDistance) {
362
63.5M
        current =
363
63.5M
            *previous + ((kDesiredRenderingDistance - arclength_from_previous) /
364
63.5M
                         arclength_to_next) *
365
63.5M
                            (*next - *previous);
366
63.5M
        functor(current, kDesiredRenderingDistance);
367
63.5M
        break;
368
63.5M
      }
369
1.29M
      arclength_from_previous += arclength_to_next;
370
1.29M
      previous = &*next;
371
1.29M
      ++next;
372
1.29M
    }
373
63.5M
  }
374
0
  return true;
375
9.46k
}
376
377
}  // namespace
378
379
StatusOr<QuantizedSpline> QuantizedSpline::Create(
380
    const Spline& original, const int32_t quantization_adjustment,
381
0
    const float y_to_x, const float y_to_b) {
382
0
  JXL_ENSURE(!original.control_points.empty());
383
0
  QuantizedSpline result;
384
0
  result.control_points_.reserve(original.control_points.size() - 1);
385
0
  const Spline::Point& starting_point = original.control_points.front();
386
0
  int previous_x = static_cast<int>(std::round(starting_point.x));
387
0
  int previous_y = static_cast<int>(std::round(starting_point.y));
388
0
  int previous_delta_x = 0;
389
0
  int previous_delta_y = 0;
390
0
  for (auto it = original.control_points.begin() + 1;
391
0
       it != original.control_points.end(); ++it) {
392
0
    const int new_x = static_cast<int>(std::round(it->x));
393
0
    const int new_y = static_cast<int>(std::round(it->y));
394
0
    const int new_delta_x = new_x - previous_x;
395
0
    const int new_delta_y = new_y - previous_y;
396
0
    result.control_points_.emplace_back(new_delta_x - previous_delta_x,
397
0
                                        new_delta_y - previous_delta_y);
398
0
    previous_delta_x = new_delta_x;
399
0
    previous_delta_y = new_delta_y;
400
0
    previous_x = new_x;
401
0
    previous_y = new_y;
402
0
  }
403
404
0
  const auto to_int = [](float v) -> int {
405
    // Maximal int representable with float.
406
0
    constexpr float kMax = std::numeric_limits<int>::max() - 127;
407
0
    constexpr float kMin = -kMax;
408
0
    return static_cast<int>(std::round(Clamp1(v, kMin, kMax)));
409
0
  };
410
411
0
  const auto quant = AdjustedQuant(quantization_adjustment);
412
0
  const auto inv_quant = InvAdjustedQuant(quantization_adjustment);
413
0
  for (int c : {1, 0, 2}) {
414
0
    float factor = (c == 0) ? y_to_x : (c == 1) ? 0 : y_to_b;
415
0
    for (int i = 0; i < 32; ++i) {
416
0
      const float dct_factor = (i == 0) ? kSqrt2 : 1.0f;
417
0
      const float inv_dct_factor = (i == 0) ? kSqrt0_5 : 1.0f;
418
0
      auto restored_y = result.color_dct_[1][i] * inv_dct_factor *
419
0
                        kChannelWeight[1] * inv_quant;
420
0
      auto decorrelated = original.color_dct[c][i] - factor * restored_y;
421
0
      result.color_dct_[c][i] =
422
0
          to_int(decorrelated * dct_factor * quant / kChannelWeight[c]);
423
0
    }
424
0
  }
425
0
  for (int i = 0; i < 32; ++i) {
426
0
    const float dct_factor = (i == 0) ? kSqrt2 : 1.0f;
427
0
    result.sigma_dct_[i] =
428
0
        to_int(original.sigma_dct[i] * dct_factor * quant / kChannelWeight[3]);
429
0
  }
430
0
  return result;
431
0
}
432
433
Status QuantizedSpline::Dequantize(const Spline::Point& starting_point,
434
                                   const int32_t quantization_adjustment,
435
                                   const float y_to_x, const float y_to_b,
436
                                   const uint64_t image_size,
437
                                   uint64_t* total_estimated_area_reached,
438
9.60k
                                   Spline& result) const {
439
9.60k
  constexpr uint64_t kOne = static_cast<uint64_t>(1);
440
9.60k
  const uint64_t area_limit =
441
9.60k
      std::min(1024 * image_size + (kOne << 32), kOne << 42);
442
443
9.60k
  result.control_points.clear();
444
9.60k
  result.control_points.reserve(control_points_.size() + 1);
445
9.60k
  float px = std::round(starting_point.x);
446
9.60k
  float py = std::round(starting_point.y);
447
9.60k
  JXL_RETURN_IF_ERROR(ValidateSplinePointPos(px, py));
448
9.60k
  int current_x = static_cast<int>(px);
449
9.60k
  int current_y = static_cast<int>(py);
450
9.60k
  result.control_points.emplace_back(static_cast<float>(current_x),
451
9.60k
                                     static_cast<float>(current_y));
452
9.60k
  int current_delta_x = 0;
453
9.60k
  int current_delta_y = 0;
454
9.60k
  uint64_t manhattan_distance = 0;
455
88.6k
  for (const auto& point : control_points_) {
456
88.6k
    current_delta_x += point.first;
457
88.6k
    current_delta_y += point.second;
458
88.6k
    manhattan_distance += std::abs(current_delta_x) + std::abs(current_delta_y);
459
88.6k
    if (manhattan_distance > area_limit) {
460
0
      return JXL_FAILURE("Too large manhattan_distance reached: %" PRIu64,
461
0
                         manhattan_distance);
462
0
    }
463
88.6k
    JXL_RETURN_IF_ERROR(
464
88.6k
        ValidateSplinePointPos(current_delta_x, current_delta_y));
465
88.6k
    current_x += current_delta_x;
466
88.6k
    current_y += current_delta_y;
467
88.6k
    JXL_RETURN_IF_ERROR(ValidateSplinePointPos(current_x, current_y));
468
88.6k
    result.control_points.emplace_back(static_cast<float>(current_x),
469
88.6k
                                       static_cast<float>(current_y));
470
88.6k
  }
471
472
9.58k
  const auto inv_quant = InvAdjustedQuant(quantization_adjustment);
473
38.3k
  for (int c = 0; c < 3; ++c) {
474
948k
    for (int i = 0; i < 32; ++i) {
475
919k
      const float inv_dct_factor = (i == 0) ? kSqrt0_5 : 1.0f;
476
919k
      result.color_dct[c][i] =
477
919k
          color_dct_[c][i] * inv_dct_factor * kChannelWeight[c] * inv_quant;
478
919k
    }
479
28.7k
  }
480
316k
  for (int i = 0; i < 32; ++i) {
481
306k
    result.color_dct[0][i] += y_to_x * result.color_dct[1][i];
482
306k
    result.color_dct[2][i] += y_to_b * result.color_dct[1][i];
483
306k
  }
484
9.58k
  uint64_t width_estimate = 0;
485
486
9.58k
  uint64_t color[3] = {};
487
38.3k
  for (int c = 0; c < 3; ++c) {
488
948k
    for (int i = 0; i < 32; ++i) {
489
919k
      color[c] += static_cast<uint64_t>(
490
919k
          std::ceil(inv_quant * std::abs(color_dct_[c][i])));
491
919k
    }
492
28.7k
  }
493
9.58k
  color[0] += static_cast<uint64_t>(std::ceil(std::abs(y_to_x))) * color[1];
494
9.58k
  color[2] += static_cast<uint64_t>(std::ceil(std::abs(y_to_b))) * color[1];
495
  // This is not taking kChannelWeight into account, but up to constant factors
496
  // it gives an indication of the influence of the color values on the area
497
  // that will need to be rendered.
498
9.58k
  const uint64_t max_color = std::max({color[1], color[0], color[2]});
499
9.58k
  uint64_t logcolor =
500
9.58k
      std::max(kOne, static_cast<uint64_t>(CeilLog2Nonzero(kOne + max_color)));
501
502
9.58k
  const float weight_limit =
503
9.58k
      std::ceil(std::sqrt((static_cast<float>(area_limit) / logcolor) /
504
9.58k
                          std::max<size_t>(1, manhattan_distance)));
505
506
316k
  for (int i = 0; i < 32; ++i) {
507
306k
    const float inv_dct_factor = (i == 0) ? kSqrt0_5 : 1.0f;
508
306k
    result.sigma_dct[i] =
509
306k
        sigma_dct_[i] * inv_dct_factor * kChannelWeight[3] * inv_quant;
510
    // If we include the factor kChannelWeight[3]=.3333f here, we get a
511
    // realistic area estimate. We leave it out to simplify the calculations,
512
    // and understand that this way we underestimate the area by a factor of
513
    // 1/(0.3333*0.3333). This is taken into account in the limits below.
514
306k
    float weight_f = std::ceil(inv_quant * std::abs(sigma_dct_[i]));
515
306k
    uint64_t weight =
516
306k
        static_cast<uint64_t>(std::min(weight_limit, std::max(1.0f, weight_f)));
517
306k
    width_estimate += weight * weight * logcolor;
518
306k
  }
519
9.58k
  *total_estimated_area_reached += (width_estimate * manhattan_distance);
520
9.58k
  if (*total_estimated_area_reached > area_limit) {
521
27
    return JXL_FAILURE("Too large total_estimated_area eached: %" PRIu64,
522
27
                       *total_estimated_area_reached);
523
27
  }
524
525
9.55k
  return true;
526
9.58k
}
527
528
Status QuantizedSpline::Decode(const std::vector<uint8_t>& context_map,
529
                               ANSSymbolReader* const decoder,
530
                               BitReader* const br,
531
                               const size_t max_control_points,
532
70.3k
                               size_t* total_num_control_points) {
533
70.3k
  const size_t num_control_points =
534
70.3k
      decoder->ReadHybridUint(kNumControlPointsContext, br, context_map);
535
70.3k
  if (num_control_points > max_control_points) {
536
11
    return JXL_FAILURE("Too many control points: %" PRIuS, num_control_points);
537
11
  }
538
70.2k
  *total_num_control_points += num_control_points;
539
70.2k
  if (*total_num_control_points > max_control_points) {
540
13
    return JXL_FAILURE("Too many control points: %" PRIuS,
541
13
                       *total_num_control_points);
542
13
  }
543
70.2k
  control_points_.resize(num_control_points);
544
  // Maximal image dimension.
545
70.2k
  constexpr int64_t kDeltaLimit = 1u << 30;
546
180k
  for (std::pair<int64_t, int64_t>& control_point : control_points_) {
547
180k
    control_point.first = UnpackSigned(
548
180k
        decoder->ReadHybridUint(kControlPointsContext, br, context_map));
549
180k
    control_point.second = UnpackSigned(
550
180k
        decoder->ReadHybridUint(kControlPointsContext, br, context_map));
551
    // Check delta-deltas are not outrageous; it is not in spec, but there is
552
    // no reason to allow larger values.
553
180k
    if ((control_point.first >= kDeltaLimit) ||
554
180k
        (control_point.first <= -kDeltaLimit) ||
555
180k
        (control_point.second >= kDeltaLimit) ||
556
180k
        (control_point.second <= -kDeltaLimit)) {
557
14
      return JXL_FAILURE("Spline delta-delta is out of bounds");
558
14
    }
559
180k
  }
560
561
281k
  const auto decode_dct = [decoder, br, &context_map](int dct[32]) -> Status {
562
281k
    constexpr int kWeirdNumber = std::numeric_limits<int>::min();
563
9.27M
    for (int i = 0; i < 32; ++i) {
564
8.99M
      dct[i] =
565
8.99M
          UnpackSigned(decoder->ReadHybridUint(kDCTContext, br, context_map));
566
8.99M
      if (dct[i] == kWeirdNumber) {
567
7
        return JXL_FAILURE("The weird number in spline DCT");
568
7
      }
569
8.99M
    }
570
281k
    return true;
571
281k
  };
572
210k
  for (auto& dct : color_dct_) {
573
210k
    JXL_RETURN_IF_ERROR(decode_dct(dct));
574
210k
  }
575
70.2k
  JXL_RETURN_IF_ERROR(decode_dct(sigma_dct_));
576
70.2k
  return true;
577
70.2k
}
578
579
35.1k
void Splines::Clear() {
580
35.1k
  quantization_adjustment_ = 0;
581
35.1k
  splines_.clear();
582
35.1k
  starting_points_.clear();
583
35.1k
  segments_.clear();
584
35.1k
  segment_indices_.clear();
585
35.1k
  segment_y_start_.clear();
586
35.1k
}
587
588
Status Splines::Decode(JxlMemoryManager* memory_manager, jxl::BitReader* br,
589
4.04k
                       const size_t num_pixels) {
590
4.04k
  std::vector<uint8_t> context_map;
591
4.04k
  ANSCode code;
592
4.04k
  JXL_RETURN_IF_ERROR(DecodeHistograms(memory_manager, br, kNumSplineContexts,
593
4.04k
                                       &code, &context_map));
594
8.02k
  JXL_ASSIGN_OR_RETURN(ANSSymbolReader decoder,
595
8.02k
                       ANSSymbolReader::Create(&code, br));
596
8.02k
  size_t num_splines =
597
8.02k
      decoder.ReadHybridUint(kNumSplinesContext, br, context_map);
598
8.02k
  size_t max_control_points = std::min(
599
8.02k
      kMaxNumControlPoints, num_pixels / kMaxNumControlPointsPerPixelRatio);
600
8.02k
  if (num_splines > max_control_points ||
601
4.00k
      num_splines + 1 > max_control_points) {
602
9
    return JXL_FAILURE("Too many splines: %" PRIuS, num_splines);
603
9
  }
604
4.00k
  num_splines++;
605
4.00k
  JXL_RETURN_IF_ERROR(DecodeAllStartingPoints(&starting_points_, br, &decoder,
606
4.00k
                                              context_map, num_splines));
607
608
3.94k
  quantization_adjustment_ = UnpackSigned(
609
3.94k
      decoder.ReadHybridUint(kQuantizationAdjustmentContext, br, context_map));
610
611
3.94k
  splines_.clear();
612
3.94k
  splines_.reserve(num_splines);
613
3.94k
  size_t num_control_points = num_splines;
614
74.1k
  for (size_t i = 0; i < num_splines; ++i) {
615
70.3k
    QuantizedSpline spline;
616
70.3k
    JXL_RETURN_IF_ERROR(spline.Decode(context_map, &decoder, br,
617
70.3k
                                      max_control_points, &num_control_points));
618
70.2k
    splines_.push_back(std::move(spline));
619
70.2k
  }
620
621
3.89k
  JXL_RETURN_IF_ERROR(decoder.CheckANSFinalState());
622
623
3.89k
  if (!HasAny()) {
624
0
    return JXL_FAILURE("Decoded splines but got none");
625
0
  }
626
627
3.89k
  return true;
628
3.89k
}
629
630
0
void Splines::AddTo(Image3F* const opsin, const Rect& opsin_rect) const {
631
0
  Apply</*add=*/true>(opsin, opsin_rect);
632
0
}
633
void Splines::AddToRow(float* JXL_RESTRICT row_x, float* JXL_RESTRICT row_y,
634
                       float* JXL_RESTRICT row_b, size_t y, size_t x0,
635
191k
                       size_t x1) const {
636
191k
  ApplyToRow</*add=*/true>(row_x, row_y, row_b, y, x0, x1);
637
191k
}
638
639
2.57k
void Splines::SubtractFrom(Image3F* const opsin) const {
640
2.57k
  Apply</*add=*/false>(opsin, Rect(*opsin));
641
2.57k
}
642
643
Status Splines::InitializeDrawCache(const size_t image_xsize,
644
                                    const size_t image_ysize,
645
6.41k
                                    const ColorCorrelation& color_correlation) {
646
  // TODO(veluca): avoid storing segments that are entirely outside image
647
  // boundaries.
648
6.41k
  segments_.clear();
649
6.41k
  segment_indices_.clear();
650
6.41k
  segment_y_start_.clear();
651
6.41k
  std::vector<std::pair<size_t, size_t>> segments_by_y;
652
6.41k
  std::vector<Spline::Point> intermediate_points;
653
6.41k
  uint64_t total_estimated_area_reached = 0;
654
6.41k
  std::vector<Spline> splines;
655
15.9k
  for (size_t i = 0; i < splines_.size(); ++i) {
656
9.60k
    Spline spline;
657
9.60k
    JXL_RETURN_IF_ERROR(splines_[i].Dequantize(
658
9.60k
        starting_points_[i], quantization_adjustment_,
659
9.60k
        color_correlation.YtoXRatio(0), color_correlation.YtoBRatio(0),
660
9.60k
        image_xsize * image_ysize, &total_estimated_area_reached, spline));
661
9.55k
    if (std::adjacent_find(spline.control_points.begin(),
662
9.55k
                           spline.control_points.end()) !=
663
9.55k
        spline.control_points.end()) {
664
      // Otherwise division by zero might occur. Once control points coincide,
665
      // the direction of curve is undefined...
666
6
      return JXL_FAILURE(
667
6
          "identical successive control points in spline %" PRIuS, i);
668
6
    }
669
9.54k
    splines.push_back(spline);
670
9.54k
  }
671
  // TODO(firsching) Change this into a JXL_FAILURE for level 5 codestreams.
672
6.35k
  if (total_estimated_area_reached >
673
6.35k
      std::min(
674
6.35k
          (8 * image_xsize * image_ysize + (static_cast<uint64_t>(1) << 25)),
675
6.35k
          (static_cast<uint64_t>(1) << 30))) {
676
21
    JXL_WARNING(
677
21
        "Large total_estimated_area_reached, expect slower decoding: %" PRIu64,
678
21
        total_estimated_area_reached);
679
21
#ifdef FUZZING_BUILD_MODE_UNSAFE_FOR_PRODUCTION
680
21
    return JXL_FAILURE("Total spline area is too large");
681
21
#endif
682
21
  }
683
684
9.46k
  for (Spline& spline : splines) {
685
9.46k
    std::vector<std::pair<Spline::Point, float>> points_to_draw;
686
63.5M
    auto add_point = [&](const Spline::Point& point, const float multiplier) {
687
63.5M
      points_to_draw.emplace_back(point, multiplier);
688
63.5M
    };
689
9.46k
    intermediate_points.clear();
690
9.46k
    DrawCentripetalCatmullRomSpline(spline.control_points, intermediate_points);
691
9.46k
    JXL_RETURN_IF_ERROR(
692
9.46k
        ForEachEquallySpacedPoint(intermediate_points, add_point));
693
9.46k
    const float arc_length =
694
9.46k
        (points_to_draw.size() - 2) * kDesiredRenderingDistance +
695
9.46k
        points_to_draw.back().second;
696
9.46k
    if (arc_length <= 0.f) {
697
      // This spline wouldn't have any effect.
698
4.86k
      continue;
699
4.86k
    }
700
4.60k
    HWY_DYNAMIC_DISPATCH(SegmentsFromPoints)
701
4.60k
    (spline, points_to_draw, arc_length, segments_, segments_by_y);
702
4.60k
  }
703
704
  // TODO(eustas): consider linear sorting here.
705
6.33k
  std::sort(segments_by_y.begin(), segments_by_y.end());
706
6.33k
  segment_indices_.resize(segments_by_y.size());
707
6.33k
  segment_y_start_.resize(image_ysize + 1);
708
104M
  for (size_t i = 0; i < segments_by_y.size(); i++) {
709
104M
    segment_indices_[i] = segments_by_y[i].second;
710
104M
    size_t y = segments_by_y[i].first;
711
104M
    if (y < image_ysize) {
712
8.14M
      segment_y_start_[y + 1]++;
713
8.14M
    }
714
104M
  }
715
5.35M
  for (size_t y = 0; y < image_ysize; y++) {
716
5.34M
    segment_y_start_[y + 1] += segment_y_start_[y];
717
5.34M
  }
718
6.33k
  return true;
719
6.33k
}
720
721
template <bool add>
722
void Splines::ApplyToRow(float* JXL_RESTRICT row_x, float* JXL_RESTRICT row_y,
723
                         float* JXL_RESTRICT row_b, size_t y, size_t x0,
724
191k
                         size_t x1) const {
725
191k
  if (segments_.empty()) return;
726
24.3k
  HWY_DYNAMIC_DISPATCH(DrawSegments)
727
24.3k
  (row_x, row_y, row_b, y, x0, x1, add, segments_.data(),
728
24.3k
   segment_indices_.data(), segment_y_start_.data());
729
24.3k
}
void jxl::Splines::ApplyToRow<true>(float*, float*, float*, unsigned long, unsigned long, unsigned long) const
Line
Count
Source
724
191k
                         size_t x1) const {
725
191k
  if (segments_.empty()) return;
726
24.3k
  HWY_DYNAMIC_DISPATCH(DrawSegments)
727
24.3k
  (row_x, row_y, row_b, y, x0, x1, add, segments_.data(),
728
24.3k
   segment_indices_.data(), segment_y_start_.data());
729
24.3k
}
Unexecuted instantiation: void jxl::Splines::ApplyToRow<false>(float*, float*, float*, unsigned long, unsigned long, unsigned long) const
730
731
template <bool add>
732
2.57k
void Splines::Apply(Image3F* const opsin, const Rect& opsin_rect) const {
733
2.57k
  if (segments_.empty()) return;
734
0
  const size_t y0 = opsin_rect.y0();
735
0
  const size_t x0 = opsin_rect.x0();
736
0
  const size_t x1 = opsin_rect.x1();
737
0
  for (size_t y = 0; y < opsin_rect.ysize(); y++) {
738
0
    ApplyToRow<add>(opsin->PlaneRow(0, y0 + y) + x0,
739
0
                    opsin->PlaneRow(1, y0 + y) + x0,
740
0
                    opsin->PlaneRow(2, y0 + y) + x0, y0 + y, x0, x1);
741
0
  }
742
0
}
Unexecuted instantiation: void jxl::Splines::Apply<true>(jxl::Image3<float>*, jxl::RectT<unsigned long> const&) const
void jxl::Splines::Apply<false>(jxl::Image3<float>*, jxl::RectT<unsigned long> const&) const
Line
Count
Source
732
2.57k
void Splines::Apply(Image3F* const opsin, const Rect& opsin_rect) const {
733
2.57k
  if (segments_.empty()) return;
734
0
  const size_t y0 = opsin_rect.y0();
735
0
  const size_t x0 = opsin_rect.x0();
736
0
  const size_t x1 = opsin_rect.x1();
737
0
  for (size_t y = 0; y < opsin_rect.ysize(); y++) {
738
0
    ApplyToRow<add>(opsin->PlaneRow(0, y0 + y) + x0,
739
0
                    opsin->PlaneRow(1, y0 + y) + x0,
740
0
                    opsin->PlaneRow(2, y0 + y) + x0, y0 + y, x0, x1);
741
0
  }
742
0
}
743
744
}  // namespace jxl
745
#endif  // HWY_ONCE