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Video Object Tracking in the Compressed Domain Using Spatio-Temporal Markov Random Fields

机译:使用时空马尔可夫随机场的压缩域视频对象跟踪

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摘要

Despite the recent progress in both pixel-domain and compressed-domain video object tracking, the need for a tracking framework with both reasonable accuracy and reasonable complexity still exists. This paper presents a method for tracking moving objects in H.264/AVC-compressed video sequences using a spatio-temporal Markov random field (ST-MRF) model. An ST-MRF model naturally integrates the spatial and temporal aspects of the object's motion. Built upon such a model, the proposed method works in the compressed domain and uses only the motion vectors (MVs) and block coding modes from the compressed bitstream to perform tracking. First, the MVs are preprocessed through intracoded block motion approximation and global motion compensation. At each frame, the decision of whether a particular block belongs to the object being tracked is made with the help of the ST-MRF model, which is updated from frame to frame in order to follow the changes in the object's motion. The proposed method is tested on a number of standard sequences, and the results demonstrate its advantages over some of the recent state-of-the-art methods.
机译:尽管在像素域和压缩域视频对象跟踪方面都取得了最新进展,但仍然需要具有合理准确性和合理复杂性的跟踪框架。本文提出了一种使用时空马尔可夫随机场(ST-MRF)模型跟踪H.264 / AVC压缩视频序列中的运动对象的方法。 ST-MRF模型自然地整合了对象运动的时空方面。基于这种模型,所提出的方法在压缩域中工作,并且仅使用运动矢量(MV)和来自压缩比特流的块编码模式来执行跟踪。首先,通过帧内编码块运动逼近和全局运动补偿对MV进行预处理。在每个帧上,借助ST-MRF模型确定特定块是否属于要跟踪的对象,该模型会逐帧更新,以便跟踪对象运动的变化。所提出的方法在许多标准序列上进行了测试,结果证明了其相对于一些最新技术的优势。

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