Some work on grayscale blue-noise

This commit is contained in:
Stephen Seo 2021-10-06 17:59:27 +09:00
parent f7ec5538bb
commit 1eee20d6ae
7 changed files with 192 additions and 20 deletions

2
.gitignore vendored
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@ -2,3 +2,5 @@ src/*.o
Dithering
compile_commands.json
.cache/

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@ -5,6 +5,7 @@
#include <iostream>
#include <fstream>
#include <memory>
#include <string>
#include <CL/opencl.h>
@ -101,6 +102,64 @@ image::Bl dither::blue_noise(int width, int height, int threads, bool use_opencl
return {};
}
image::Bl dither::blue_noise_grayscale(int width, int height, int threads) {
int count = width * height;
std::vector<float> filter_out;
filter_out.resize(count);
std::vector<float> image = internal::random_noise_grayscale(count);
int iterations = 0;
int filter_size = (width + height) / 4;
std::vector<float> precomputed(internal::precompute_gaussian(filter_size));
while(true) {
printf("Iteration %d\n", iterations);
internal::compute_filter_grayscale(image,
width, height, count,
filter_size, filter_out,
&precomputed, threads);
int min, max;
float tempPixel;
int prevmin = -1;
int prevmax = -1;
std::tie(min, max) = internal::filter_minmax(filter_out);
printf("min == %4d, max == %4d\n", min, max);
tempPixel = image[max];
image[max] = image[min];
image[min] = tempPixel;
if(prevmin >= 0 && prevmax >= 0
&& (utility::dist(min, prevmin, width) < 1.5F
|| utility::dist(max, prevmax, width) < 1.5F)) {
break;
}
prevmin = min;
prevmax = max;
//#ifndef NDEBUG
if(iterations % 20 == 0) {
std::string name;
name.append("tempGrayscale");
if(iterations < 10) {
name.append("00");
} else if(iterations < 100) {
name.append("0");
}
name.append(std::to_string(iterations));
name.append(".pgm");
image::Bl(image, width).writeToFile(image::file_type::PGM, true, name);
}
//#endif
++iterations;
}
// TODO
return image::Bl(image, width);
}
std::vector<bool> dither::internal::blue_noise_impl(int width, int height, int threads) {
int count = width * height;
std::vector<float> filter_out;
@ -117,7 +176,7 @@ std::vector<bool> dither::internal::blue_noise_impl(int width, int height, int t
fprintf(random_noise_image, "P1\n%d %d\n", width, height);
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
fprintf(random_noise_image, "%d ", pbp[utility::twoToOne(x, y, width)] ? 1 : 0);
fprintf(random_noise_image, "%d ", pbp[utility::twoToOne(x, y, width, height)] ? 1 : 0);
}
fputc('\n', random_noise_image);
}
@ -212,7 +271,7 @@ std::vector<bool> dither::internal::blue_noise_impl(int width, int height, int t
fprintf(blue_noise_image, "P1\n%d %d\n", width, height);
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
fprintf(blue_noise_image, "%d ", pbp[utility::twoToOne(x, y, width)] ? 1 : 0);
fprintf(blue_noise_image, "%d ", pbp[utility::twoToOne(x, y, width, height)] ? 1 : 0);
}
fputc('\n', blue_noise_image);
}
@ -229,7 +288,7 @@ std::vector<bool> dither::internal::blue_noise_impl(int width, int height, int t
fprintf(blue_noise_image, "P1\n%d %d\n", width, height);
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
fprintf(blue_noise_image, "%d ", pbp[utility::twoToOne(x, y, width)] ? 1 : 0);
fprintf(blue_noise_image, "%d ", pbp[utility::twoToOne(x, y, width, height)] ? 1 : 0);
}
fputc('\n', blue_noise_image);
}
@ -458,7 +517,7 @@ std::vector<bool> dither::internal::blue_noise_cl_impl(
fprintf(random_noise_image, "P1\n%d %d\n", width, height);
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
fprintf(random_noise_image, "%d ", pbp[utility::twoToOne(x, y, width)] ? 1 : 0);
fprintf(random_noise_image, "%d ", pbp[utility::twoToOne(x, y, width, height)] ? 1 : 0);
}
fputc('\n', random_noise_image);
}
@ -540,7 +599,7 @@ std::vector<bool> dither::internal::blue_noise_cl_impl(
fprintf(blue_noise_image, "P1\n%d %d\n", width, height);
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
fprintf(blue_noise_image, "%d ", pbp[utility::twoToOne(x, y, width)] ? 1 : 0);
fprintf(blue_noise_image, "%d ", pbp[utility::twoToOne(x, y, width, height)] ? 1 : 0);
}
fputc('\n', blue_noise_image);
}
@ -556,7 +615,7 @@ std::vector<bool> dither::internal::blue_noise_cl_impl(
fprintf(blue_noise_image, "P1\n%d %d\n", width, height);
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
fprintf(blue_noise_image, "%d ", pbp[utility::twoToOne(x, y, width)] ? 1 : 0);
fprintf(blue_noise_image, "%d ", pbp[utility::twoToOne(x, y, width, height)] ? 1 : 0);
}
fputc('\n', blue_noise_image);
}

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@ -22,6 +22,8 @@ namespace dither {
image::Bl blue_noise(int width, int height, int threads = 1, bool use_opencl = true);
image::Bl blue_noise_grayscale(int width, int height, int threads = 1);
namespace internal {
std::vector<bool> blue_noise_impl(int width, int height, int threads = 1);
std::vector<bool> blue_noise_cl_impl(
@ -54,6 +56,27 @@ namespace internal {
return pbp;
}
inline std::vector<float> random_noise_grayscale(unsigned int size) {
std::vector<float> graynoise;
graynoise.reserve(size);
std::default_random_engine re(std::random_device{}());
std::uniform_real_distribution<float> dist(0.0F, 1.0F);
for(unsigned int i = 0; i < size; ++i) {
graynoise.push_back(static_cast<float>(i) / static_cast<float>(size - 1));
//graynoise[i] = dist(re);
}
for(unsigned int i = 0; i < size - 1; ++i) {
std::uniform_int_distribution<unsigned int> range(i + 1, size - 1);
unsigned int ridx = range(re);
float temp = graynoise[i];
graynoise[i] = graynoise[ridx];
graynoise[ridx] = temp;
}
return graynoise;
}
constexpr float mu_squared = 1.5f * 1.5f;
inline float gaussian(float x, float y) {
@ -87,8 +110,9 @@ namespace internal {
int q_prime = (height + filter_size / 2 + y - q) % height;
for(int p = 0; p < filter_size; ++p) {
int p_prime = (width + filter_size / 2 + x - p) % width;
if(pbp[utility::twoToOne(p_prime, q_prime, width)]) {
sum += gaussian((float)p - filter_size/2.0f, (float)q - filter_size/2.0f);
if(pbp[utility::twoToOne(p_prime, q_prime, width, height)]) {
sum += gaussian((float)p - filter_size/2.0f,
(float)q - filter_size/2.0f);
}
}
}
@ -96,6 +120,24 @@ namespace internal {
return sum;
}
inline float filter_grayscale(
const std::vector<float> &image,
int x, int y,
int width, int height, int filter_size) {
float sum = 0.0F;
for(int q = 0; q < filter_size; ++q) {
int q_prime = (height + filter_size / 2 + y - q) % height;
for(int p = 0; p < filter_size; ++p) {
int p_prime = (width + filter_size / 2 + x - p) % width;
sum += image[utility::twoToOne(p_prime, q_prime, width, height)]
* gaussian((float)p - filter_size/2.0F,
(float)q - filter_size/2.0F);
}
}
return sum;
}
inline float filter_with_precomputed(
const std::vector<bool>& pbp,
int x, int y,
@ -107,8 +149,8 @@ namespace internal {
int q_prime = (height + filter_size / 2 + y - q) % height;
for(int p = 0; p < filter_size; ++p) {
int p_prime = (width + filter_size / 2 + x - p) % width;
if(pbp[utility::twoToOne(p_prime, q_prime, width)]) {
sum += precomputed[utility::twoToOne(p, q, filter_size)];
if(pbp[utility::twoToOne(p_prime, q_prime, width, height)]) {
sum += precomputed[utility::twoToOne(p, q, filter_size, filter_size)];
}
}
}
@ -116,6 +158,25 @@ namespace internal {
return sum;
}
inline float filter_with_precomputed_grayscale(
const std::vector<float>& image,
int x, int y,
int width, int height, int filter_size,
const std::vector<float> &precomputed) {
float sum = 0.0F;
for(int q = 0; q < filter_size; ++q) {
int q_prime = (height + filter_size / 2 + y - q) % height;
for(int p = 0; p < filter_size; ++p) {
int p_prime = (width + filter_size / 2 + x - p) % width;
sum += image[utility::twoToOne(p_prime, q_prime, width, height)]
* precomputed[utility::twoToOne(p, q, filter_size, filter_size)];
}
}
return sum;
}
inline void compute_filter(
const std::vector<bool> &pbp, int width, int height,
int count, int filter_size, std::vector<float> &filter_out,
@ -125,7 +186,7 @@ namespace internal {
if(precomputed) {
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
filter_out[utility::twoToOne(x, y, width)] =
filter_out[utility::twoToOne(x, y, width, height)] =
internal::filter_with_precomputed(
pbp, x, y, width, height, filter_size, *precomputed);
}
@ -133,7 +194,7 @@ namespace internal {
} else {
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
filter_out[utility::twoToOne(x, y, width)] =
filter_out[utility::twoToOne(x, y, width, height)] =
internal::filter(pbp, x, y, width, height, filter_size);
}
}
@ -211,6 +272,36 @@ namespace internal {
}
inline void compute_filter_grayscale(
const std::vector<float> &image, int width, int height,
int count, int filter_size, std::vector<float> &filter_out,
const std::vector<float> *precomputed = nullptr,
int threads = 1) {
if(precomputed) {
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
filter_out[utility::twoToOne(x, y, width, height)] =
internal::filter_with_precomputed_grayscale(
image,
x, y,
width, height,
filter_size,
*precomputed);
}
}
} else {
for(int y = 0; y < height; ++y) {
for(int x = 0; x < width; ++x) {
filter_out[utility::twoToOne(x, y, width, height)] =
internal::filter_grayscale(image,
x, y,
width, height,
filter_size);
}
}
}
}
inline std::pair<int, int> filter_minmax(const std::vector<float>& filter) {
float min = std::numeric_limits<float>::infinity();
float max = 0.0f;
@ -287,7 +378,7 @@ namespace internal {
break;
}
}
next = utility::twoToOne(xy.first, xy.second, width);
next = utility::twoToOne(xy.first, xy.second, width, height);
if((get_one && pbp[next]) || (!get_one && !pbp[next])) {
return next;
}

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@ -27,6 +27,16 @@ width(width),
height(data.size() / width)
{}
image::Bl::Bl(const std::vector<float> &data, int width) :
data{},
width(width),
height(data.size() / width)
{
for(float gspixel : data) {
this->data.push_back(static_cast<uint8_t>(255.0F * gspixel));
}
}
void image::Bl::randomize() {
if(!isValid()) {
return;
@ -112,7 +122,7 @@ bool image::Bl::writeToFile(file_type type, bool canOverwrite, const char *filen
return false;
}
for(unsigned int i = 0; i < data.size(); ++i) {
if(i % width == 0) {
if(type == file_type::PBM && i % width == 0) {
fprintf(file, "\n");
}
switch(type) {
@ -120,10 +130,14 @@ bool image::Bl::writeToFile(file_type type, bool canOverwrite, const char *filen
fprintf(file, "%d ", data[i] == 0 ? 0 : 1);
break;
case file_type::PGM:
fprintf(file, "%c ", data[i]);
//fprintf(file, "%c ", data[i]);
fputc(data[i], file);
break;
case file_type::PPM:
fprintf(file, "%c %c %c ", data[i], data[i], data[i]);
//fprintf(file, "%c %c %c ", data[i], data[i], data[i]);
fputc(data[i], file);
fputc(data[i], file);
fputc(data[i], file);
break;
default:
fclose(file);

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@ -53,6 +53,7 @@ namespace image {
Bl(int width, int height);
Bl(const std::vector<uint8_t> &data, int width);
Bl(std::vector<uint8_t> &&data, int width);
Bl(const std::vector<float> &data, int width);
virtual ~Bl() {}
Bl(const Bl &other) = default;

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@ -4,10 +4,13 @@
int main(int argc, char **argv) {
//#ifndef NDEBUG
std::cout << "Trying blue_noise..." << std::endl;
image::Bl bl = dither::blue_noise(100, 100, 8, true);
bl.writeToFile(image::file_type::PBM, true, "blueNoiseOut.pbm");
// std::cout << "Trying blue_noise..." << std::endl;
// image::Bl bl = dither::blue_noise(100, 100, 8, true);
// bl.writeToFile(image::file_type::PBM, true, "blueNoiseOut.pbm");
//#endif
image::Bl bl = dither::blue_noise_grayscale(64, 64);
bl.writeToFile(image::file_type::PGM, true, "blueNoiseGrayscaleOut.pgm");
return 0;
}

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@ -5,7 +5,9 @@
#include <cmath>
namespace utility {
inline int twoToOne(int x, int y, int width) {
inline int twoToOne(int x, int y, int width, int height) {
x = x % width;
y = y % height;
return x + y * width;
}