Thepade’s Sorted Block Truncation Coding Applied on Local Binary Patterns of Images for Splicing Identification Using Machine Learning Classifiers

Sudeep D. Thepade, Divesh M. Bakshani, Tanvi Bhingurde, Shivaji Burghate, Shreepad Deshmankar
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Abstract

The era of digitization has accelerated communication and information sharing immensely. With ever-growing digital advancements in technology and applications cybersecurity poses to be a pressing issue. The amount of growth in data exchange is exponential thus making automated processes a vital tool to deliver security. Image editing technologies manipulate image data and have enabled all types of users to tamper images resulting in widespread fake images. Distorted information carries heavy consequences and thus a reliable image forgery detection system is essential. This paper proposes a machine learning-based approach for image splicing detection using the global and local characteristics of the image. TSBTC N-ary, with the value of N = 12,14 and 16, is applied along with LBP for feature extraction and various Machine learning classifiers are implemented and compared for image splicing detection. The performance of the proposed method is tested and validated on 3 benchmark datasets: CASIA V1 Dataset, Columbia Dataset, and Columbia Uncompressed Dataset. Results are evaluated based on various performance metrics.
页的排序块截断编码应用于图像的局部二值模式拼接识别的机器学习分类器
数字化时代极大地促进了交流和信息共享。随着数字技术和应用的不断发展,网络安全成为一个紧迫的问题。数据交换的数量呈指数级增长,因此使自动化流程成为交付安全性的重要工具。图像编辑技术操纵图像数据,并使所有类型的用户篡改图像,导致广泛的假图像。失真信息会带来严重的后果,因此可靠的图像伪造检测系统至关重要。本文提出了一种基于机器学习的图像拼接检测方法,利用图像的全局和局部特征。TSBTC N-ary的值分别为N = 12,14和16,与LBP一起用于特征提取,并实现各种机器学习分类器进行图像拼接检测。在CASIA V1数据集、哥伦比亚数据集和哥伦比亚未压缩数据集3个基准数据集上对该方法的性能进行了测试和验证。结果根据各种性能指标进行评估。
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