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Passive forensic based on spatio-temporal localization of video object removal tampering
Authors:Linqiang CHEN  Quanxin YANG  Lifeng YUAN  Ye YAO  Zhen ZHANG  Guohua WU
Affiliation:1. School of Cyberspace Security,Hangzhou Dianzi University,Hangzhou 310018,China;2. School of Computer,Hangzhou Dianzi University,Hangzhou 310018,China
Abstract:To address the problem of identification of authenticity and integrity of video content and the location of video tampering area,a deep learning detection algorithm based on video noise flow was proposed.Firstly,based on SRM (spatial rich model) and C3D (3D convolution) neural network,a feature extractor,a frame discriminator and a RPN (region proposal network) based spatial locator were constructed.Secondly,the feature extractor was combined with the frame discriminator and the spatial locator respectively,and then two neural networks were built.Finally,two kinds of deep learning models were trained by the enhanced data,which were used to locate the tampered area in temporal domain and spatial domain respectively.The test results show that the accuracy of temporal-domain location is increased to 98.5%,and the average intersection over union of spatial localization and tamper area labeling is 49%,which can effectively locate the tamper area in temporal domain and spatial domain.
Keywords:video object removal tampering  spatio-temporal localization  video passive forensic  object detection based on 3D convolution  
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