Published on Mon Jul 19 2021

Detection of Double Compression in MPEG-4 Videos Using Refined Features-based CNN

Seung-Hun Nam, Wonhyuk Ahn, Myung-Joon Kwon, In-Jae Yu

Double compression is accompanied by various types of video manipulation and traces can be exploited to determine whether a video is a forgery. This letter presents a convolutional neural network for detecting double compression in MPEG-4 videos.

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Abstract

Double compression is accompanied by various types of video manipulation and its traces can be exploited to determine whether a video is a forgery. This Letter presents a convolutional neural network for detecting double compression in MPEG-4 videos. Through analysis of the intra-coding process, we utilize two refined features for capturing the subtle artifacts caused by double compression. The discrete cosine transform (DCT) histogram feature effectively detects the change of statistical characteristics in DCT coefficients and the parameter-based feature is utilized as auxiliary information to help the network learn double compression artifacts. When compared with state-of-the-art networks and forensic method, the results show that the proposed approach achieves a higher performance.

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