Cross-entropy method for K-best dependent-target data association hypothesis selection

S. Mori, C. Chong
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引用次数: 2

Abstract

This paper is concerned with probabilistic evaluation of multiple-frame data association hypotheses in multiple-target tracking problems, in particular, when targets are not necessarily independent a priori. Multiple-target tracking problems with dependent targets naturally arise whenever targets interact with each other, as they move in congested traffic, or as they actively coordinate their movements in other situations. This paper develops a Bayesian data association hypothesis evaluation formula for dependent targets. Because the resulting formula does not have a multiplicative or log-linear form, the best hypothesis cannot be selected by integer linear programming or multi-dimensional assignment algorithms commonly used to solve data association problems in multiple target tracking. Instead, we propose to use Reuven Rubinstein's cross-entropy method as a possible solution. A K-best hypothesis selection extension will be discussed as an application of the generalized Murty's algorithm. This paper focuses on the theoretical aspects as the first step of a solution concept development.
k -最优相关目标数据关联假设选择的交叉熵方法
研究了多目标跟踪问题中多帧数据关联假设的概率评估问题,特别是当目标不一定是先验独立的情况下。每当目标相互作用时,当它们在拥挤的交通中移动时,或者当它们在其他情况下主动协调运动时,就会出现依赖目标的多目标跟踪问题。本文建立了一个相关目标的贝叶斯数据关联假设评价公式。由于所得公式不具有乘法或对数线性形式,因此无法使用通常用于解决多目标跟踪中数据关联问题的整数线性规划或多维赋值算法来选择最佳假设。相反,我们建议使用鲁文鲁宾斯坦的交叉熵方法作为一种可能的解决方案。作为广义Murty算法的一个应用,我们将讨论k -最优假设选择的扩展。本文着重从理论方面作为解决概念发展的第一步。
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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