Identification of Image Forgery based on various Corner Detection methods

Anupama Debnath, Smita Das
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引用次数: 1

Abstract

Digital image indubitably has lost virginity in both its source and surroundings due to the encroachment of high-resolution camera, state-of-the-art image handling tools and contemporary personal computers. As a result, authenticating the integrity of digital image became very imperative and discovering any indications of falsification in the image has turned into a sizzling turf to carry out research for last few years. In this paper, image forgery has been identified using Min Eigen feature extraction based on Shi-Tomasi Corner Detection method which detects interest points. Initially, various corner detection and feature extraction methods have been studied and analysed to extract features from the input images. From the gray-scale image, distinctive localized features are extracted based on Harris feature extraction, surf features and fast features. Subsequently, Euclidean distance is calculated between the feature vectors of the images. Then the resultant feature values are further implemented using classifiers to obtain accurate result analysis.
基于各种角点检测方法的图像伪造识别
毫无疑问,由于高分辨率相机、最先进的图像处理工具和当代个人电脑的入侵,数字图像在其来源和环境中都失去了童贞。因此,验证数字图像的完整性变得非常必要,发现图像中的任何伪造迹象已成为近年来开展研究的热门领域。本文采用基于Shi-Tomasi角点检测方法的最小特征提取来识别图像伪造。首先,对各种角点检测和特征提取方法进行了研究和分析,从输入图像中提取特征。从灰度图像中,基于Harris特征提取、surf特征和fast特征提取出鲜明的局部特征。然后,计算图像特征向量之间的欧氏距离。然后利用分类器进一步实现得到的特征值,得到准确的结果分析。
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