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Video tamper detection based on multi-scale mutual information

机译:基于多尺度互信息的视频篡改检测

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摘要

Video frame manipulation has become commonplace with the growing easy access to powerful computing abilities. One of the most common types of video frame tampers is the copy-paste tamper, wherein a region from a video frame is replaced with another region from the same frame. In order to improve the robustness of passive video tampering detection, we propose a content-based video similarity tamper passive blind detection algorithm based on multi-scale normalized mutual information which can implement video frame copy, frame insertion and frame deletion tamper detection. The detail implementation of the proposed algorithm consists of multi-scale content analysis, single-scale content similarity measure, multi-scale content similarity measure, and tampering positioning. Firstly, we get the scales of the visual content of the video frame using Gaussian pyramid transform; Secondly, to measure the similarity of single-scale visual content, we define adjacent normalized mutual information of two frames according to information theory; Thirdly, we construct the multi-scale normalized mutual information descriptors to achieve the multi-scale visual content similarity measure of adjacent two frames using a linear combination. Finally, we use the local outlier isolated factor detection algorithm to detect the position of the video tampering. Experimental results show that the proposed approach can not only detect the video frame tampering position of delete, copy, and insert effectively, but also can detect the tampering of different and homology video encoding formats. We obtain a feature detecting accuracy in excess of 93% and detection rate of 96% across post processing operations, and are able to detect the delete, copy, and insert regions with a high true positive rate and lower false positive rate than the existing time field tamper detection methods.
机译:随着越来越容易获得强大的计算能力,视频帧处理已变得司空见惯。视频帧篡改最常见的一种类型是复制粘贴篡改,其中视频帧中的一个区域被同一帧中的另一个区域替换。为了提高被动视频篡改检测的鲁棒性,我们提出了一种基于内容的视频相似性篡改被动盲检测算法,该算法基于多尺度归一化互信息,可以实现视频帧的复制,帧插入和帧删除的篡改检测。该算法的详细实现包括多尺度内容分析,单尺度内容相似性度量,多尺度内容相似性度量和篡改定位。首先,我们使用高斯金字塔变换获得视频帧的视觉内容的尺度;其次,为了衡量单尺度视觉内容的相似性,我们根据信息论定义了两个框架的相邻归一化互信息。第三,我们构造了多尺度归一化互信息描述符,以使用线性组合实现相邻两个帧的多尺度视觉内容相似性度量。最后,我们使用局部离群值孤立因素检测算法来检测视频篡改的位置。实验结果表明,该方法不仅可以有效地检测出删除,复制和插入视频帧的篡改位置,而且可以检测出不同且同源的视频编码格式的篡改情况。在整个后期处理操作中,我们获得的特征检测精度超过93%,检测率达到96%,并且能够检测到比真实时间高的真阳性率和更低的假阳性率的删除,复制和插入区域现场篡改检测方法。

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