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Fog Rectification

This example shows the use of image processing functions for GPU code generation. The example takes a foggy image as input and produces a defogged image. This example is a typical implementation of fog rectification algorithm. The example uses conv2, im2gray, and imhist functions.

Third-Party Prerequisites


This example generates CUDA® MEX and has the following third-party requirements.

  • CUDA enabled NVIDIA® GPU and compatible driver. For half-precision code generation, the GPU must have a minimum compute capability of 6.0.


For non-MEX builds such as static, dynamic libraries or executables, this example has the following additional requirements.

Verify GPU Environment

To verify that the compilers and libraries necessary for running this example are set up correctly, use the coder.checkGpuInstall function.

envCfg = coder.gpuEnvConfig('host');
envCfg.BasicCodegen = 1;
envCfg.Quiet = 1;

The fog_rectification Entry-Point Function

The fog_rectification.m entry-point function takes a foggy image as input and returns a defogged image.

type fog_rectification
function [out] = fog_rectification(input) %#codegen

%   Copyright 2017-2019 The MathWorks, Inc.


% restoreOut is used to store the output of restoration
restoreOut = zeros(size(input),'double');

% Changing the precision level of input image to double
input = double(input)./255;

%% Dark channel Estimation from input
darkChannel = min(input,[],3);

% diff_im is used as input and output variable for anisotropic diffusion
diff_im = 0.9*darkChannel;
num_iter = 3;

% 2D convolution mask for Anisotropic diffusion
hN = [0.0625 0.1250 0.0625; 0.1250 0.2500 0.1250; 0.0625 0.1250 0.0625];
hN = double(hN);

%% Refine dark channel using Anisotropic diffusion.
for t = 1:num_iter
    diff_im = conv2(diff_im,hN,'same');

%% Reduction with min
diff_im = min(darkChannel,diff_im);

diff_im = 0.6*diff_im ;

%% Parallel element-wise math to compute
%  Restoration with inverse Koschmieder's law
factor = 1.0./(1.0-(diff_im));
restoreOut(:,:,1) = (input(:,:,1)-diff_im).*factor;
restoreOut(:,:,2) = (input(:,:,2)-diff_im).*factor;
restoreOut(:,:,3) = (input(:,:,3)-diff_im).*factor;
restoreOut = uint8(255.*restoreOut);
restoreOut = uint8(restoreOut);

% Stretching performs the histogram stretching of the image.
% im is the input color image and p is cdf limit.
% out is the contrast stretched image and cdf is the cumulative prob.
% density function and T is the stretching function.

p = 5;
% RGB to grayscale conversion
im_gray = im2gray(restoreOut);
[row,col] = size(im_gray);

% histogram calculation
[count,~] = imhist(im_gray);
prob = count'/(row*col);

% cumulative Sum calculation
cdf = cumsum(prob(:));

% finding less than particular probability
i1 = length(find(cdf <= (p/100)));
i2 = 255-length(find(cdf >= 1-(p/100)));

o1 = floor(255*.10);
o2 = floor(255*.90);

t1 = (o1/i1)*[0:i1];
t2 = (((o2-o1)/(i2-i1))*[i1+1:i2])-(((o2-o1)/(i2-i1))*i1)+o1;
t3 = (((255-o2)/(255-i2))*[i2+1:255])-(((255-o2)/(255-i2))*i2)+o2;

T = (floor([t1 t2 t3]));

restoreOut(restoreOut == 0) = 1;

u1 = (restoreOut(:,:,1));
u2 = (restoreOut(:,:,2));
u3 = (restoreOut(:,:,3));

% Replacing the value from look up table
out1 = T(u1);
out2 = T(u2);
out3 = T(u3);

out = zeros([size(out1),3], 'uint8');
out(:,:,1) = uint8(out1);
out(:,:,2) = uint8(out2);
out(:,:,3) = uint8(out3);

Generate CUDA Code and MEX function

Set up the input for code generation and create a configuration for GPU code generation.

inputImage = imread('foggyInput.png');
cfg = coder.gpuConfig('mex');

Run Code Generation

Generate the fog_rectification_mex MEX file by using the codegen command.

codegen -args {inputImage} -config cfg fog_rectification -o fog_rectification_gpu_mex
Code generation successful: To view the report, open('codegen/mex/fog_rectification/html/report.mldatx').

Run the MEX Function with Foggy Image

Run the generated fog_rectification_gpu_mex with a foggy input image, and then plot the foggy and defogged images.

[outputImage] = fog_rectification_gpu_mex(inputImage);

% plot images
p1  = subplot(1, 2, 1);
p2 = subplot(1, 2, 2);
imshow(inputImage, 'Parent', p1);
imshow(outputImage, 'Parent', p2);
title(p1, 'Foggy Input Image');
title(p2, 'Defogged Output Image');

Because of architectural differences between the CPU and GPU, numeric verification does not always match. This scenario is true when using the single data type or when performing integer type conversion in your MATLAB code. In this example, the integer type conversion in the fog_rectification.m entry-point function produces numeric differences with MATLAB simulation.


Computations in this example can also be done in half-precision floating point numbers, using the fog_rectification_half_precision.m entry-point function. To generate and execute code with half-precision data types, CUDA compute capability of 6.0 or higher is required. Set the ComputeCapability property of the code configuration object to '6.0'. For half-precision, the memory allocation (malloc) mode for generating CUDA code must be set to 'Discrete'.

inputImage = half(imread('foggyInput.png'));
cfg = coder.gpuConfig('mex');
cfg.GpuConfig.ComputeCapability = '6.0';
cfg.GpuConfig.MallocMode = 'Discrete';
codegen -args {inputImage} -config cfg fog_rectification_half_precision -o fog_rectification_gpu_mex
Code generation successful: To view the report, open('codegen/mex/fog_rectification_half_precision/html/report.mldatx').

See Also



Related Topics