Jump to content
Ieškoti
  • Daugiau nustatymų...
Rasti rezultatus, kurie...
Rasti rezultatus...

Las-Venturas.LT | 14-oji advento diena!

Prisijungę žaidėjai: 0 / 200

Versija: LV 7.8.5

Digital Image Processing Using Scilab Pdf -

Article ID: DIP-SCILAB-01 Target Audience: Engineering students, researchers, hobbyists Software Required: Scilab 6.1+ with SIVP (Scilab Image and Video Processing) toolbox 1. Introduction Digital Image Processing (DIP) involves manipulating digital images using computer algorithms. While MATLAB is the industry standard, Scilab —a free, open-source alternative—provides powerful capabilities for DIP through its SIVP (Scilab Image and Video Processing) toolbox and core functions.

Would you like a ready-to-download PDF version of this article? Copy this content into any word processor and export as PDF, or use a browser’s print-to-PDF feature.

// Compute histogram hist = imhist(gray_img); plot(hist); // Apply histogram equalization eq_img = histeq(gray_img); imshow(eq_img); min_val = min(gray_img); max_val = max(gray_img); stretched = (gray_img - min_val) / (max_val - min_val) * 255; 4.3 Gamma Correction gamma = 0.5; // darkens midtones corrected = 255 * (double(gray_img)/255)^gamma; 5. Filtering and Noise Reduction 5.1 Adding Noise noisy_img = imnoise(gray_img, 'gaussian', 0, 0.01); noisy_img = imnoise(gray_img, 'salt & pepper', 0.05); 5.2 Mean Filter (Low-pass) // 3x3 averaging kernel h = (1/9) * ones(3,3); filtered = imfilter(gray_img, h); 5.3 Median Filter (Non-linear) Better for salt-and-pepper noise: digital image processing using scilab pdf

// Low-pass filter in frequency domain [m, n] = size(gray_img); cx = m/2; cy = n/2; radius = 30; H = zeros(m, n); for i = 1:m for j = 1:n if sqrt((i-cx)^2 + (j-cy)^2) <= radius H(i, j) = 1; end end end

// Dilation dilated = imdilate(binary, se); Would you like a ready-to-download PDF version of

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

// Threshold to create binary image binary = gray_img > 128; // Structuring element (disk of radius 3) se = [0 1 0; 1 1 1; 0 1 0]; Filtering and Noise Reduction 5

// 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

×
×
  • Kurti naują...