Classification of human body motion

J. Rittscher, A. Blake
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引用次数: 65

Abstract

The classification of human body motion is a difficult problem. In particular, the automatic segmentation of image sequences containing more than one class of motion is challenging. An effective approach is to use mixed discrete/continuous states to couple perception with classification. A spline contour is used to track the outline of the person. We show that, for a quasi-periodic human body motion, an autoregressive process is a suitable model for the contour dynamics. This can then be used as a dynamical model for mixed-state "condensation" filtering, switching automatically between different motion classes. We have developed "partial importance sampling" to enhance the efficiency of the mixed-state condensation filter. It is also shown that the importance sampling can be done in linear time, instead of the previous quadratic algorithm. "Tying" of discrete states is used to obtain further efficiency improvements. Automatic segmentation is demonstrated on video sequences of aerobic exercises. The performance is promising, but there remains a residual misclassification rate, and possible explanations for this are discussed.
人体运动的分类
人体运动的分类是一个难点问题。特别是,包含多于一类运动的图像序列的自动分割是具有挑战性的。一种有效的方法是使用离散/连续混合状态将感知与分类耦合起来。样条轮廓用于跟踪人的轮廓。结果表明,对于准周期人体运动,自回归过程是轮廓动力学的合适模型。然后,这可以用作混合状态“冷凝”过滤的动态模型,在不同的运动类之间自动切换。我们开发了“部分重要采样”来提高混合状态冷凝过滤器的效率。结果表明,重要性抽样可以在线性时间内完成,而不是以往的二次算法。离散状态的“捆绑”用于进一步提高效率。自动分割演示了视频序列的有氧运动。性能是有希望的,但仍然存在残余的误分类率,并讨论了可能的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
16.50
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0.00%
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