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C++

#include <opencv2/opencv.hpp> // all opencv header
#include <vector>
#include <utility>
#include "hdrplus/merge.h"
#include "hdrplus/burst.h"
#include "hdrplus/utility.h"
namespace hdrplus
{
void merge::process(hdrplus::burst& burst_images, \
std::vector<std::vector<std::vector<std::pair<int, int>>>>& alignments)
{
// 4.1 Noise Parameters and RMS
// Noise parameters calculated from baseline ISO noise parameters
double lambda_shot, lambda_read;
std::tie(lambda_shot, lambda_read) = burst_images.bayer_images[burst_images.reference_image_idx].get_noise_params();
// 4.2-4.4 Denoising and Merging
// Get padded bayer image
cv::Mat reference_image = burst_images.bayer_images_pad[burst_images.reference_image_idx];
cv::imwrite("ref.jpg", reference_image);
// Get raw channels
std::vector<cv::Mat> channels(4, cv::Mat::zeros(reference_image.rows / 2, reference_image.cols / 2, CV_16U));
hdrplus::extract_rgb_fmom_bayer<uint16_t>(reference_image, channels[0], channels[1], channels[2], channels[3]);
// For each channel, perform denoising and merge
for (int i = 0; i < 4; ++i) {
// Get channel mat
cv::Mat channel_i = channels[i];
// cv::imwrite("ref" + std::to_string(i) + ".jpg", channel_i);
//we should be getting the individual channel in the same place where we call the processChannel function with the reference channel in its arguments
//possibly we could add another argument in the processChannel function which is the channel_i for the alternate image. maybe using a loop to cover all the other images
//create list of channel_i of alternate images:
std::vector<cv::Mat> alternate_channel_i_list;
for (int j = 0; j < burst_images.num_images; j++) {
if (j != burst_images.reference_image_idx) {
//get alternate image
cv::Mat alt_image = burst_images.bayer_images_pad[j];
std::vector<cv::Mat> alt_channels(4, cv::Mat::zeros(reference_image.rows / 2, reference_image.cols / 2, CV_16U));
hdrplus::extract_rgb_fmom_bayer<uint16_t>(alt_image, alt_channels[0], alt_channels[1], alt_channels[2], alt_channels[3]);
alternate_channel_i_list.push_back(alt_channels[i]);
}
}
// Apply merging on the channel
cv::Mat merged_channel = processChannel(burst_images, alignments, channel_i, alternate_channel_i_list, lambda_shot, lambda_read);
// cv::imwrite("merged" + std::to_string(i) + ".jpg", merged_channel);
// Put channel raw data back to channels
merged_channel.convertTo(channels[i], CV_16U);
}
// Write all channels back to a bayer mat
cv::Mat merged(reference_image.rows, reference_image.cols, CV_16U);
int x, y;
for (y = 0; y < reference_image.rows; ++y){
uint16_t* row = merged.ptr<uint16_t>(y);
if (y % 2 == 0){
uint16_t* i0 = channels[0].ptr<uint16_t>(y / 2);
uint16_t* i1 = channels[1].ptr<uint16_t>(y / 2);
for (x = 0; x < reference_image.cols;){
//R
row[x] = i0[x / 2];
x++;
//G1
row[x] = i1[x / 2];
x++;
}
}
else {
uint16_t* i2 = channels[2].ptr<uint16_t>(y / 2);
uint16_t* i3 = channels[3].ptr<uint16_t>(y / 2);
for(x = 0; x < reference_image.cols;){
//G2
row[x] = i2[x / 2];
x++;
//B
row[x] = i3[x / 2];
x++;
}
}
}
// Remove padding
std::vector<int> padding = burst_images.padding_info_bayer;
cv::Range horizontal = cv::Range(padding[2], reference_image.cols - padding[3]);
cv::Range vertical = cv::Range(padding[0], reference_image.rows - padding[1]);
burst_images.merged_bayer_image = merged(vertical, horizontal);
}
std::vector<cv::Mat> merge::getReferenceTiles(cv::Mat reference_image) {
std::vector<cv::Mat> reference_tiles;
for (int y = 0; y < reference_image.rows - offset; y += offset) {
for (int x = 0; x < reference_image.cols - offset; x += offset) {
cv::Mat tile = reference_image(cv::Rect(x, y, TILE_SIZE, TILE_SIZE));
reference_tiles.push_back(tile);
}
}
return reference_tiles;
}
cv::Mat merge::mergeTiles(std::vector<cv::Mat> tiles, int num_rows, int num_cols) {
// 1. get all four subsets: original (evenly split), horizontal overlapped,
// vertical overlapped, 2D overlapped
std::vector<std::vector<cv::Mat>> tiles_original;
for (int y = 0; y < num_rows / offset - 1; y += 2) {
std::vector<cv::Mat> row;
for (int x = 0; x < num_cols / offset - 1; x += 2) {
row.push_back(tiles[y * (num_cols / offset - 1) + x]);
}
tiles_original.push_back(row);
}
std::vector<std::vector<cv::Mat>> tiles_horizontal;
for (int y = 0; y < num_rows / offset - 1; y += 2) {
std::vector<cv::Mat> row;
for (int x = 1; x < num_cols / offset - 1; x += 2) {
row.push_back(tiles[y * (num_cols / offset - 1) + x]);
}
tiles_horizontal.push_back(row);
}
std::vector<std::vector<cv::Mat>> tiles_vertical;
for (int y = 1; y < num_rows / offset - 1; y += 2) {
std::vector<cv::Mat> row;
for (int x = 0; x < num_cols / offset - 1; x += 2) {
row.push_back(tiles[y * (num_cols / offset - 1) + x]);
}
tiles_vertical.push_back(row);
}
std::vector<std::vector<cv::Mat>> tiles_2d;
for (int y = 1; y < num_rows / offset - 1; y += 2) {
std::vector<cv::Mat> row;
for (int x = 1; x < num_cols / offset - 1; x += 2) {
row.push_back(tiles[y * (num_cols / offset - 1) + x]);
}
tiles_2d.push_back(row);
}
// 2. Concatenate the four subsets
cv::Mat img_original = cat2Dtiles(tiles_original);
cv::Mat img_horizontal = cat2Dtiles(tiles_horizontal);
cv::Mat img_vertical = cat2Dtiles(tiles_vertical);
cv::Mat img_2d = cat2Dtiles(tiles_2d);
// 3. Add the four subsets together
img_original(cv::Rect(offset, 0, num_cols - TILE_SIZE, num_rows)) += img_horizontal;
img_original(cv::Rect(0, offset, num_cols, num_rows - TILE_SIZE)) += img_vertical;
img_original(cv::Rect(offset, offset, num_cols - TILE_SIZE, num_rows - TILE_SIZE)) += img_2d;
return img_original;
}
cv::Mat merge::processChannel(hdrplus::burst& burst_images, \
std::vector<std::vector<std::vector<std::pair<int, int>>>>& alignments, \
cv::Mat channel_image, \
std::vector<cv::Mat> alternate_channel_i_list,\
float lambda_shot, \
float lambda_read) {
// Get tiles of the reference image
std::vector<cv::Mat> reference_tiles = getReferenceTiles(channel_image);
// Get noise variance (sigma**2 = lambda_shot * tileRMS + lambda_read)
std::vector<float> noise_variance = getNoiseVariance(reference_tiles, lambda_shot, lambda_read);
// Apply FFT on reference tiles (spatial to frequency)
std::vector<cv::Mat> reference_tiles_DFT;
for (auto ref_tile : reference_tiles) {
cv::Mat ref_tile_DFT;
ref_tile.convertTo(ref_tile_DFT, CV_32F);
cv::dft(ref_tile_DFT, ref_tile_DFT, cv::DFT_SCALE | cv::DFT_COMPLEX_OUTPUT);
reference_tiles_DFT.push_back(ref_tile_DFT);
}
// TODO: 4.2 Temporal Denoising
//std::vector<cv::Mat> temporal_denoised_tiles = temporal_denoise(reference_tiles, reference_tiles_DFT, noise_varaince)
// TODO: 4.3 Spatial Denoising
////adding after here
//std::vector<cv::Mat> spatial_denoised_tiles = spatial_denoise( reference_tiles, reference_tiles_DFT, noise_varaince)
//apply the cosineWindow2D over the merged_channel_tiles_spatial and reconstruct the image
//reference_tiles = spatial_denoised_tiles; //now reference tiles are temporally and spatially denoised
////
// Apply IFFT on reference tiles (frequency to spatial)
std::vector<cv::Mat> denoised_tiles;
for (auto dft_tile : reference_tiles_DFT) {
cv::Mat denoised_tile;
cv::dft(dft_tile, denoised_tile, cv::DFT_INVERSE | cv::DFT_REAL_OUTPUT);
denoised_tile.convertTo(denoised_tile, CV_16U);
denoised_tiles.push_back(denoised_tile);
}
reference_tiles = denoised_tiles;
// 4.4 Cosine Window Merging
// Process tiles through 2D cosine window
std::vector<cv::Mat> windowed_tiles;
for (auto tile : reference_tiles) {
windowed_tiles.push_back(cosineWindow2D(tile));
}
// Merge tiles
return mergeTiles(windowed_tiles, channel_image.rows, channel_image.cols);
}
// std::vector<cv::Mat> temporal_denoise(std::vector<cv::Mat> reference_tiles, std::vector<cv::Mat> reference_tiles_DFT, std::vector<float> noise_varaince) {
// //goal: temporially denoise using the weiner filter
// //input:
// //1. array of 2D dft tiles of the reference image
// //2. array of 2D dft tiles ocf the aligned alternate image
// //3. estimated noise varaince
// //4. temporal factor
// //return: merged image patches dft
// //tile_size = TILE_SIZE;
// double temporal_factor = 8.0 //8 by default
// double temporal_noise_scaling = (pow(TILE_SIZE,2) * (1.0/16*2))*temporal_factor;
// //start calculating the merged image tiles fft
// //get the tiles of the alternate image as a list
// std::vector<std::vector<cv::Mat>> alternate_channel_i_tile_list; //list of alt channel tiles
// std::vector<std::vector<cv::Mat>> alternate_tiles_DFT_list; //list of alt channel tiles
// for (auto alt_img_channel : alternate_channel_i_list) {
// std::vector<uint16_t> alt_img_channel_tile = getReferenceTiles(alt_img_channel); //get tiles from alt image
// alternate_channel_i_tile_list.push_back(alt_img_channel_tile)
// std::vector<cv::Mat> alternate_tiles_DFT_list;
// for (auto alt_tile : alt_img_channel_tile) {
// cv::Mat alt_tile_DFT;
// alt_tile.convertTo(alt_tile_DFT, CV_32F);
// cv::dft(alt_tile_DFT, alt_tile_DFT, cv::DFT_SCALE | cv::DFT_COMPLEX_OUTPUT);
// alternate_tiles_DFT_list.push_back(alt_tile_DFT);
// }
// alternate_tiles_DFT_list.push_back(alternate_tiles_DFT);
// }
// //get the dft of the alternate image
// //std::vector<cv::Mat> alternate_tiles_DFT;
// //std::vector<cv::Mat> tile_differences = reference_tiles_DFT - alternate_tiles_DFT_list;
// //find reference_tiles_DFT - alternate_tiles_DFT_list
// std::vector<std::vector<cv::Mat>> tile_difference_list; //list of tile differences
// for (auto individual_alternate_tile_DFT : alternate_tiles_DFT_list) {
// std::vector<cv::Mat> single_tile_difference = reference_tiles_DFT - individual_alternate_tile_DFT;
// tile_difference_list.push_back(single_tile_difference);
// }
// // std::vector<cv::Mat> tile_sq_asolute_diff = tile_differences; //squared absolute difference is tile_differences.real**2 + tile_differnce.imag**2; //also tile_dist
// std::vector<cv::Mat> tile_sq_asolute_diff = tile_differences; //squared absolute difference is tile_differences.real**2 + tile_differnce.imag**2; //also tile_dist
// //get the real and imaginary components
// /*
// std::vector<std::vector<cv::Mat>> absolute_difference_list;
// for (auto individual_difference : tile_difference_list) {
// for (int i =0; i < individual_difference.rows; i++ ) {
// std::complex<double>* row_ptr = tile_sq_asolute_diff.ptr<std::complex<double>>(i);
// for (int j = 0; j< individual_difference.cols*individual_difference.channels(); j++) {
// row_ptr = math.pow(individual_difference.at<std::complex<double>>(i,j).real(),2)+math.pow(individual_difference.at<std::complex<double>>(i,j).imag(),2); //.real and .imag
// }
// }
// //std::vector<cv::Mat> single_tile_difference = individual_difference.at<std::complex<double>>(0,0).real(); //.real and .imag
// absolute_difference_list.push_back(single_tile_difference);
// }
// */
// //find the squared absolute difference across all the tiles
// std::vector<cv::Mat> A = tile_sq_asolute_diff/(tile_sq_asolute_diff+noise_variance)
// std::vector<cv::Mat> merged_image_tiles_fft = alternate_tiles_DFT_list + A * tile_differences;
// return merged_image_tiles_fft
// }
// std::vector<cv::Mat> spatial_denoise(std::vector<cv::Mat> reference_tiles, std::vector<cv::Mat> reference_tiles_DFT, std::vector<float> noise_varaince) {
// double spatial_factor = 1; //to be added
// double spatial_noise_scaling = (pow(TILE_SIZE,2) * (1.0/16*2))*spatial_factor;
// //calculate the spatial denoising
// spatial_tile_dist = reference_tiles.real**2 + reference_tiles.imag**2;
// std::vector<cv::Mat> WienerCoeff = denoised_tiles*spatial_noise_scaling*noise_variance;
// merged_channel_tiles_spatial = reference_tiles*spatial_tile_dist/(spatial_tile_dist+WienerCoeff)
// }
} // namespace hdrplus