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首页> 外文期刊>IEEE Transactions on Signal Processing >Void Probabilities and Cauchy–Schwarz Divergence for Generalized Labeled Multi-Bernoulli Models
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Void Probabilities and Cauchy–Schwarz Divergence for Generalized Labeled Multi-Bernoulli Models

机译:广义标记的多伯努利模型的空洞概率和柯西-施瓦兹散度

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摘要

The generalized labeled multi-Bernoulli (GLMB) is a family of tractable models that alleviates the limitations of the Poisson family in dynamic Bayesian inference of point processes. In this paper, we derive closed form expressions for the void probability functional and the Cauchy–Schwarz divergence for GLMBs. The proposed analytic void probability functional is a necessary and sufficient statistic that uniquely characterizes a GLMB, while the proposed analytic Cauchy–Schwarz divergence provides a tractable measure of similarity between GLMBs. We demonstrate the use of both results on a partially observed Markov decision process for GLMBs, with Cauchy–Schwarz divergence based reward, and void probability constraint.
机译:广义标记的多重伯努利(GLMB)是一族易处理的模型,可减轻Poisson族在动态贝叶斯推理过程中的局限性。在本文中,我们推导了GLMB的无效概率函数和Cauchy-Schwarz散度的闭式表达式。拟议的分析无效概率函数是唯一表征GLMB的必要和充分的统计量,而拟议的解析Cauchy–Schwarz散度则为GLMB之间的相似性提供了一种易于度量的度量。我们证明了这两种结果在部分观测到的GLMB的Markov决策过程中的使用,并具有基于Cauchy-Schwarz散度的奖励和无效概率约束。

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