Real Time Viterbi Optimization of Hidden Markov Models for Multi Target Tracking

Hakan Ardo, K. Astrom, R. Berthilsson
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引用次数: 25

Abstract

In this paper the problem of tracking multiple objects in im- age sequences is studied. A Hidden Markov Model describ- ing the movements of multiple objects is presented. Previ- ously similar models have been used, but in real time sys- tem the standard dynamic programming Viterbi algorithm is typically not used to find the global optimum state se- quence, as it requires that all past and future observations are available. In this paper we present an extension to the Viterbi algorithm that allows it to operate on infinite time sequences and produce the optimum with only a finite de- lay. This makes it possible to use the Viterbi algorithm in real time applications. Also, to handle the large state spaces of these models another extension is proposed. The global optimum is found by iteratively running an approximative algorithm with higher and higher precision. The algorithm can determine when the global optimum is found by main- taining an upper bound on all state sequences not evalu- ated. For real time performance some approximations are needed and two such approximations are suggested. The theory has been tested on three real data experiments, all with promising results.
多目标跟踪隐马尔可夫模型的实时Viterbi优化
研究了图像年龄序列中多目标的跟踪问题。提出了一种描述多目标运动的隐马尔可夫模型。以前已经使用了类似的模型,但在实时系统中,通常不使用标准的动态规划Viterbi算法来寻找全局最优状态序列,因为它要求所有过去和未来的观测都是可用的。本文给出了Viterbi算法的一种扩展,使其可以在无限时间序列上运行,并在有限延迟下产生最优解。这使得在实时应用程序中使用Viterbi算法成为可能。此外,为了处理这些模型的大状态空间,提出了另一种扩展。通过迭代运行一种精度越来越高的近似算法来求全局最优。该算法通过对所有未求值的状态序列保持一个上界来确定何时找到全局最优解。为了实现实时性能,需要一些近似,并提出了两种近似。这个理论已经在三个真实的数据实验中得到了验证,结果都很有希望。
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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