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Consistency features and fuzzy-based segmentation for shadow and reflection detection in digital image forgery

Advances in photo editing software have made it possible to generate visually convincing photographic forgeries which have been increased tremendously in recent years. In order to alleviate the problem of image forgery, a handful of techniques have been presented in the literature to detect forgery...

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Published in:Science China. Information sciences 2017-08, Vol.60 (8), p.79-96, Article 082101
Main Authors: Cristin, Rajan, Cyril Raj, Velankanni
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description Advances in photo editing software have made it possible to generate visually convincing photographic forgeries which have been increased tremendously in recent years. In order to alleviate the problem of image forgery, a handful of techniques have been presented in the literature to detect forgery either in shadow or reflection. This paper aims to develop a technique to detect the image forgery either in shadow or reflection using features enabled neural network. The proposed technique of image forgery detection contains three important steps, like segmentation, feature extraction and detection. In segmentation, shadow points and reflection points are identified using map-based segmentation and FCM clustering. Then, feature points from the shadow points and reflective parts are extracted by considering texture consistency and strength consistency using LVP operator. The final step of forgery detection is performed using the feed forward neural network, where a new algorithm called ABCLM is developed for training of neural network weights. The performance is analyzed with four existing algorithms using measures such as accuracy and MSE. From the analysis, we understand that the proposed technique obtained the maximum accuracy of 80.49%.
doi_str_mv 10.1007/s11432-016-0478-y
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source Springer Nature
subjects Algorithms
Clustering
Computer Science
Consistency
Digital imaging
Feature extraction
Forgery
Information Systems and Communication Service
Neural networks
Research Paper
Shadows
一致性
伪造
分割
反射点
数字图像
特征提取
网络检测
阴影
title Consistency features and fuzzy-based segmentation for shadow and reflection detection in digital image forgery
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