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HMM triangle relative entropy concepts in sequential change detection applied to vision-based dim target manoeuvre detection

机译:HMM三角相对熵概念在顺序变化检测中应用于基于视觉的昏暗目标机动检测

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摘要

The quick detection of abrupt (unknown) parameter changes in an observed hidden Markov model (HMM) is important in several applications. Motivated by the recent application of relative entropy concepts in the robust sequential change detection problem (and the related model selection problem), this paper proposes a sequential unknown change detection algorithm based on a relative entropy based HMM parameter estimator. Our proposed approach is able to overcome the lack of knowledge of post-change parameters, and is illustrated to have similar performance to the popular cumulative sum (CUSUM) algorithm (which requires knowledge of the post-change parameter values) when examined, on both simulated and real data, in a vision-based aircraft manoeuvre detection problem.
机译:在几种应用中,快速检测观察到的隐马尔可夫模型(HMM)中突然(未知)的参数变化非常重要。基于相对熵概念在鲁棒的顺序变化检测问题(以及相关模型选择问题)中的最新应用,本文提出了一种基于基于熵的HMM参数估计器的顺序未知变化检测算法。我们提出的方法能够克服对变更后参数的了解的不足,并且在检查时都表现出与流行的累积总和(CUSUM)算法(需要了解变更后参数值)相似的性能。模拟和真实数据,基于视觉的飞机操纵检测问题。

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