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引用次数: 10

摘要

在存在图像噪声、前景提取不完美和人体部分遮挡的情况下,对单眼视频中的人体姿态进行跟踪是许多视频分析应用的重要内容。人体姿态跟踪可以通过整合面部和肢体等成分的检测来增强鲁棒性。我们提出了一种基于数据驱动的马尔可夫链蒙特卡罗(DD-MCMC)方法,利用分量检测结果生成姿态估计和初始化的状态建议。在一个真实的室内视频序列上的实验结果表明,该方法能够跟踪人的转身和坐姿运动。
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Integrating component cues for human pose tracking
Tracking human body pose in monocular video in the presence of image noise, imperfect foreground extraction and partial occlusion of the human body is important for many video analysis applications. Human pose tracking can be made more robust by integrating the detection of components such as face and limbs. We proposed an approach based on data-driven Markov chain Monte Carlo (DD-MCMC) where component detection results are used to generate state proposals for pose estimation and initialization. Experimental results on a realistic indoor video sequence show that the method is able to track a person during turning and sitting movements.
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