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A Bayesian approach to joint tracking and identification of geometric shapes in video sequences

机译:用于视频序列中几何形状的联合跟踪和识别的贝叶斯方法

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摘要

A Bayesian approach is proposed for joint tracking and identification. These two problems are often addressed independently in the literature, leading to suboptimal performance. In a Bayesian approach, a prior distribution is set on both the hypothesis space and the associated parameter space. Although this is straightforward from a conceptual viewpoint, it is typically impossible to perform inference in closed-form. We discuss an advanced particle filtering approach to solve this computational problem and apply this algorithm to joint tracking and identification of geometric forms in video sequences.
机译:提出了一种贝叶斯方法进行联合跟踪和识别。这两个问题通常在文献中被独立解决,导致性能欠佳。在贝叶斯方法中,在假设空间和关联的参数空间上都设置了先验分布。尽管从概念上讲这很简单,但是通常不可能以封闭形式进行推断。我们讨论了一种解决此计算问题的高级粒子滤波方法,并将该算法应用于视频序列中几何形状的联合跟踪和识别。

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