Image operator forensics and sequence estimation using robust deep neural network

被引:0
|
作者
Saurabh Agarwal
Ki-Hyun Jung
机构
[1] Amity University Uttar Pradesh,Amity School of Engineering & Technology
[2] Andong National University,Department of Software Convergence
来源
关键词
Image forgery detection; Image operator sequence; Convolutional neural network; Image filtering; Image forensics;
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中图分类号
学科分类号
摘要
Digital images can be manipulated with recent tools. Image forensics examines the image from several angles to spot any anomalies. Most techniques are applicable to detect a single operation on the image. In actual practice, fake photos are manipulated with multiple operations and compression algorithms. A convolutional neural network with a reasonable size is designed to detect operators and the respective sequences for two operators in particular. The bottleneck strategy is incorporated to optimize the network training cost and a high-depth network. The detection of a particular operator depends on inherent statistical information. A single global average pooling layer preserves the statistical information in a convolutional neural network. The strength of existing detection techniques is also reduced in low-resolution and high-compression environments. The proposed method performs better than existing techniques on compressed small-size images even though forensic is difficult in small-size and compressed images due to inadequate statistical traces. The proposed convolutional neural network also applies to detect operators with unknown specifications and compression not used in training.
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页码:47431 / 47454
页数:23
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