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A Comparative Analysis of LBP Variants for Image Tamper Detection
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A Comparative Analysis of LBP Variants for Image Tamper Detection

pocket, 2024
Engelsk
This thesis explores the use of Local Binary Patterns (LBP) and Convolutional Neural Networks (CNN) for detecting image tampering, an increasingly prevalent issue in today's digital landscape. Through a comparative analysis of four LBP variants using the CASIA-2.0 dataset, it combines LBP's texture descriptors with CNN to enhance accuracy and robustness. The methodology involves generating local texture descriptors with LBP and feeding them into a CNN architecture trained to classify images as tampered or authentic. Despite challenges like computational complexity, the research aims to contribute to a reliable tamper detection system applicable in various real-world scenarios. Notably, Uniform LBP demonstrates superior performance in both training/testing time, achieving accuracy and F1-score exceeding 97% in image tamper detection, validating the effectiveness of the approach.
ISBN
9786207487493
Språk
Engelsk
Vekt
127 gram
Utgivelsesdato
24.4.2024
Antall sider
80