图形跟踪的多假设方法

Tat-Jen Cham, James M. Rehg
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引用次数: 400

摘要

本文描述了一个概率多假设框架,用于跟踪高关节目标。在这个框架中,跟踪器状态的概率密度被表示为一组模式,这些模式周围的邻域由分段高斯分布表征。概率密度的时间演化是通过从先验分布中抽样,然后对样本位置进行局部优化来获得更新模态来实现的。这种从状态空间搜索生成假设的方法不像经典的多假设跟踪那样需要使用离散特征。模型的参数形式适用于高维状态空间,而非参数方法无法有效地建模。结果显示了跟踪弗雷德·阿斯泰尔在一个电影舞蹈序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multiple hypothesis approach to figure tracking
This paper describes a probabilistic multiple-hypothesis framework for tracking highly articulated objects. In this framework, the probability density of the tracker state is represented as a set of modes with piecewise Gaussians characterizing the neighborhood around these modes. The temporal evolution of the probability density is achieved through sampling from the prior distribution, followed by local optimization of the sample positions to obtain updated modes. This method of generating hypotheses from state-space search does not require the use of discrete features unlike classical multiple-hypothesis tracking. The parametric form of the model is suited for high dimensional state-spaces which cannot be efficiently modeled using non-parametric approaches. Results are shown for tracking Fred Astaire in a movie dance sequence.
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