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RNN Based Bitstream Feature Extraction Method for Codec Classification

机译:基于RNN的比特流特征提取方法在编解码器分类中的应用

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In this paper, we propose codec classification algorithm based on recurrent neural network (RNN) model. In videocompression, codecs, such as MPEG2 and H.264/AVC, have their own distinctive data structure. These unique structureswhich are almost shown in header can be considered their feature. The proposed algorithm exploits that characteristics forclassifying unknown bitstreams into specific codec. According to the fact that RNN is appropriate to time series data forlearning to classification/recognition, the feature of an encoded bitstream can be extracted. We constitute the encodedbitstream as an input and give the bitstream its label indicating codec index. Two standard codecs, MPEG2 and H.264/AVC,are used in experiment. Experimental results show that the proposed RNN model classified bitstreams into correspondingcodecs to some extent.
机译:本文提出了一种基于递归神经网络(RNN)模型的编解码器分类算法。影片中 压缩时,编解码器(例如MPEG2和H.264 / AVC)具有自己独特的数据结构。这些独特的结构 标题中几乎显示的内容可以视为其功能。所提出的算法利用了该特性 将未知比特流分类为特定编解码器。根据以下事实,RNN适用于以下时间序列数据: 通过学习分类/识别,可以提取编码比特流的特征。我们构成了编码 比特流作为输入,并为比特流提供指示编解码器索引的标签。两种标准编解码器MPEG2和H.264 / AVC, 用于实验。实验结果表明,所提出的RNN模型将比特流划分为相应的比特流。 编解码器在某种程度上。

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