digital image processing using scilab pdf

Digital Image Processing Using Scilab Pdf File

// Get image dimensions (rows, cols, channels) size(img) gray_img = rgb2gray(img); imshow(gray_img); 3.3 Access and Modify Pixels // Access pixel at row 100, column 150 pixel = img(100, 150, :); // Set a region of interest to black img(50:100, 50:100, :) = 0; 4. Image Enhancement 4.1 Histogram Equalization Improves contrast by spreading intensity values.

// Install SIVP from ATOMS (Scilab’s package manager) atomsInstall("SIVP") // Restart Scilab after installation // Load the toolbox exec("SCI/modules/sivp/macros/sivp_loader.sce", -1) Alternatively, use core functions ( imread , imshow , imwrite ) available in recent Scilab versions. 3.1 Read, Display, and Write Images // Read an image img = imread('camera.jpg'); // Display image imshow(img);

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// 5. Edge detection sobel_x = [-1 0 1; -2 0 2; -1 0 1]; Gx = imfilter(double(img), sobel_x); Gy = imfilter(double(img), sobel_x'); edges = sqrt(Gx.^2 + Gy.^2);

// 4. Enhance contrast img = histeq(img); // Get image dimensions (rows, cols, channels) size(img)

// Opening (erosion followed by dilation) opened = imopen(binary, se);

// Apply filter F_filtered = F_shifted .* H; F_restored = ifftshift(F_filtered); filtered_img = abs(ifft2(F_restored)); imshow(uint8(filtered_img)); // Full image processing pipeline function processed = process_image(path) // 1. Read img = imread(path); // 2. Convert to grayscale if size(img, 3) == 3 img = rgb2gray(img); end Edge detection sobel_x = [-1 0 1; -2

// Erosion eroded = imerode(binary, se);