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Hybrid Rule-Based/Neural Approach for Segmentation of MPEG Compressed Video

机译:基于混合规则/神经网络的MPEG压缩视频分割

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摘要

An approach for video segmentation into shots and sub-shots that works directly in the MPEG compressed domain is presented. It is based only on the information about macroblock coding mode and motion vectors in P and B frames. The system follows a two-pass scheme and has a hybrid rule-basedeural structure. A rough scan over the P frames locates the potential shot boundaries and the solution is then refined by a precise scan over the B frames of the respective neighborhoods. The "simpler" boundaries are recognized by the rule-based module, while the decisions for the "complex" ones are refined by the neural part. The latter is also used to distinguish dissolves from object and camera motions and to further divide shots into sub-shots. The experiments demonstrate high speed and classification accuracy without computationally expensive calculations and need for many thresholds.
机译:提出了一种将视频分割为镜头和子镜头的方法,该方法可直接在MPEG压缩域中工作。它仅基于有关P和B帧中宏块编码模式以及运动矢量的信息。该系统遵循两遍方案,并具有基于规则/神经的混合结构。对P帧进行粗略扫描可以找到潜在的镜头边界,然后通过对各个邻域的B帧进行精确扫描来完善解决方案。基于规则的模块可以识别“较简单”的边界,而神经部分则可以对“复杂”的边界进行决策。后者还用于区分物体和相机运动中的溶解,并将镜头进一步分为子镜头。实验证明了高速和分类精度,而无需计算昂贵的计算,并且需要许多阈值。

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