In this article, we aim to detect the double compression of MPEG-4, a universal video codec that is built into surveillance systems and shooting devices. Double compression is accompanied by various types of video manipulation, and its traces can be exploited to determine whether a video is a forgery. To this end, we present a neural network-based approach with discriminant features for capturing peculiar artifacts in the discrete cosine transform (DCT) domain caused by double MPEG-4 compression. By analyzing the intra-coding process of MPEG-4, which performs block-DCT-based quantization, we exploit multiple DCT histograms as features to focus on the statistical properties of DCT coefficients on multiresolution blocks. Furthermore, we improve detection performance using a vectorized feature of the quantization table on dense layers as auxiliary information. Compared with neural network-based approaches suitable for exploring subtle manipulations, the experimental results reveal that this work achieves high performance.
翻译:在此篇文章中,我们的目标是检测MPEG-4的双重压缩,这是一套通用的视频编码器,它包含在监视系统和射击装置中。双压缩配有各种类型的视频操作,其痕迹可以用来确定视频是否伪造。为此,我们提出了一个神经网络法,具有差异特性,用于捕捉由双MPEG-4压缩造成的离散共弦变形(DCT)域内的特殊文物。通过分析进行基于区块的DCT量化的 MPEG-4 内部编码程序,我们利用多DCT 直方图作为特征,侧重于多分辨率区块DCT 系数的统计特性。此外,我们利用密度层四分制表的矢量特性作为辅助信息来改进探测性。与适合于探索微妙操纵的神经网络方法相比,实验结果显示这项工作取得了高性能。