淡江大學機構典藏:Item 987654321/120008
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    题名: Image-format-independent Tampered Image Detection Based on Overlapping Concurrent Directional Patterns and Neural Networks
    作者: Wu, M. L.;Fahn, C. S.;Chen, Y. F.
    关键词: Digital image forensics;Digital image authentication;Tampered image detection;Artificial neural network
    日期: 2017-03-13
    上传时间: 2021-03-04 12:13:11 (UTC+8)
    出版者: Springer Netherlands
    摘要: With the advancement of photo editing software, digital documents can easily be altered, which causes some legal issues. This paper proposes an image authentication method, which determines whether an image is authentic. Unlike many existing methods that only work with images in the JPEG format, the proposed method is image format independent, implying that it works with both noncompressed images and images in all compression formats. To improve the authentication accuracy, some strategies, such as overlapping image blocks only on concurrent directions, using a two-scale local binary pattern operator, and choosing the mean deviation instead of the standard deviation, are applied. A back-propagation neural network (BPNN) is used instead of support vector machines (SVMs) for classification to make online learning easier and achieve higher accuracy. In our experiments, we used the CASIA Database (CASIA TIDE v1.0) of compressed images and the Columbia University Digital Video Multimedia (DVMM) dataset of uncompressed images to evaluate our image authentication method. This benchmark dataset includes two types of image tampering, namely image splicing and copy–move forgery. Experiments were performed using both the SVM and BPNN classifiers with various parameters. We determined that the BPNN achieved a higher accuracy of up to 97.26 %.
    關聯: Applied Intelligence 47(2), pp. 347-361
    DOI: 10.1007/s10489-017-0893-4
    显示于类别:[資訊工程學系暨研究所] 期刊論文

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