基于块的MRF模型在H.264/AVC压缩视频中的鲁棒运动目标分割

Wei Zeng , Jun Du , Wen Gao , Qingming Huang
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引用次数: 122

摘要

压缩域运动目标分割在视频索引、视频转码、视频监控等实时应用中起着重要的作用。由于H.264/AVC是最新的视频编码标准,对H.264/AVC压缩视频进行视频分析的文献报道很少。与以前的MPEG标准相比,H.264/AVC采用了几种新的编码工具,提供了不同的视频格式。因此,对H.264/AVC压缩视频进行运动目标分割是一项全新的、具有挑战性的工作。针对H.264/AVC压缩视频,提出了一种鲁棒的运动目标提取方法。该算法采用基于块的马尔可夫随机场(MRF)模型,从直接从比特流获得的稀疏运动向量场中分割运动物体。该方法将目标跟踪集成到统一的MRF模型中,同时利用了目标的时间一致性。实验结果表明,该方法能够高效、鲁棒地提取运动目标。该算法的突出应用是基于对象的转码、快速运动目标检测、压缩视频的视频分析等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust moving object segmentation on H.264/AVC compressed video using the block-based MRF model

Moving object segmentation in compressed domain plays an important role in many real-time applications, e.g. video indexing, video transcoding, video surveillance, etc. Because H.264/AVC is the up-to-date video-coding standard, few literatures have been reported in the area of video analysis on H.264/AVC compressed video. Compared with the former MPEG standard, H.264/AVC employs several new coding tools and provides a different video format. As a consequence, moving object segmentation on H.264/AVC compressed video is a new task and challenging work. In this paper, a robust approach to extract moving objects on H.264/AVC compressed video is proposed. Our algorithm employs a block-based Markov Random Field (MRF) model to segment moving objects from the sparse motion vector field obtained directly from the bitstream. In the proposed method, object tracking is integrated in the uniform MRF model and exploits the object temporal consistency simultaneously. Experiments show that our approach provides the remarkable performance and can extract moving objects efficiently and robustly. The prominent applications of the proposed algorithm are object-based transcoding, fast moving object detection, video analysis on compressed video, etc.

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