变分逼近数据关联滤波器

H. Kanazaki, T. Yairi, K. Machida, K. Kondo, Y. Matsukawa
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引用次数: 2

摘要

本文将变分近似应用于多目标定位,提出了变分近似数据关联滤波(VADAF)方法,使边缘似然与近似似然之间的KL分歧最小化。对于多目标定位,必须解决数据关联问题。数据关联问题是当数据没有与目标相关联的唯一标签时,我们不能确定地将数据与目标相关联。JPDAF被广泛用于多目标跟踪(MTT)。它是在卡尔曼滤波等顺序贝叶斯估计方法基础上的扩展滤波方法。该方法不仅基于序列贝叶斯估计,而且基于变分逼近方法。我们的主要贡献是推导目标状态的变分近似似然,并通过最小化KL散度来优化它。它比JPDAF方法的混合似然更精确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variational Approximation Data Association Filter
We apply a variational approximation for multiple-target localization, and propose Variational Approximation Data Association Filter(VADAF) method, which minimize KL divergence between marginalized likelihood and approximated one. For multiple-target localization, we have to solve data association problem. The data association problem is that we can not associate data and targets deterministically, when data don't have unique labels associated to targets. JPDAF is widely used for multiple-target tracking (MTT). It is extended filtering method based on Sequential Bayesian Estimation methods, such as Kalman Filter. Our method is not only based on the sequential bayes estimation, but based on variational approximation method. Our main contribution is derivation of variational approximated likelihood of targets' states, and optimize it by minimizing KL divergence. It is more precisely than mixture likelihood of JPDAF method.
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