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Moving object extraction based on Markov random field models

机译:基于马尔可夫随机现场模型的移动对象提取

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In order to provide more efficient content-based functionalities for video applications such as content-based scalable coding, content-based indexing and retrieval, it is necessary to extract meaningful objects from scenes to enable object based representation of video content. This paper proposes an algorithm that uses Markov random field models for motion field to extract meaningful objects from video sequences, these models characterize motion of moving objects in terms of spatial interaction between motion vectors within the motion field. The proposed algorithm employs a splitting and merging procedure, in the splitting phase video frame is divided into a number of uniform regions with respect to spatial features; to detect moving objects, adjacent segmented regions are grouped together according to the motion information during the merging process, which is directed by the conditional pseudolikelihood of the motion field. The performance of the algorithm is evaluated on real world video sequences.
机译:为了为视频应用提供更有效的基于内容的功能,例如基于内容的可伸缩编码,基于内容的索引和检索,必须从场景中提取有意义的对象以使基于对象的视频内容的表示。本文提出了一种算法,它使用Markov随机字段模型用于从视频序列中提取有意义的对象,这些模型表征了移动对象的运动,以运动场内运动矢量之间的空间交互而言。所提出的算法采用分裂和合并过程,在分割相位视频帧中相对于空间特征被分成多个均匀区域;为了检测移动对象,相邻的分段区域根据合并处理期间根据运动信息分组在一起,这由运动场的条件伪偶数引导。在现实世界视频序列中评估了算法的性能。

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