目标分类中传感器规划的信息功能与搜索策略比较。

Guoxian Zhang, Silvia Ferrari, Chenghui Cai
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引用次数: 33

摘要

本文利用一个典型目标分类问题,研究了几种信息驱动搜索策略和决策规则的性能比较。考虑了五种传感器模型:一种来自经典估计理论,四种来自伯努利分布、泊松分布、二项分布和混合二项分布。提出了一种系统的方法,用于从互信息、r nyi散度、Kullback-Leibler散度、信息势、二次熵和Cauchy-Schwarz距离中推导信息函数,这些信息函数表示未来传感器测量的预期效用。将得到的信息驱动策略与直接搜索、警报确认、任务驱动(TS)和对数似然比(LLR)搜索策略进行比较。大量的数值模拟表明,二次熵通常会导致关于正确分类率的最有效的搜索策略。在存在先验信息的情况下,二次熵驱动的策略也显示出最低的误报率。然而,当先验信息缺失或噪声很大时,TS和LLR策略对伯努利、混合二项和经典传感器模型的误报率最低。
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A comparison of information functions and search strategies for sensor planning in target classification.

This paper investigates the comparative performance of several information-driven search strategies and decision rules using a canonical target classification problem. Five sensor models are considered: one obtained from classical estimation theory and four obtained from Bernoulli, Poisson, binomial, and mixture-of-binomial distributions. A systematic approach is presented for deriving information functions that represent the expected utility of future sensor measurements from mutual information, Rènyi divergence, Kullback-Leibler divergence, information potential, quadratic entropy, and the Cauchy-Schwarz distance. The resulting information-driven strategies are compared to direct-search, alert-confirm, task-driven (TS), and log-likelihood-ratio (LLR) search strategies. Extensive numerical simulations show that quadratic entropy typically leads to the most effective search strategy with respect to correct-classification rates. In the presence of prior information, the quadratic-entropy-driven strategy also displays the lowest rate of false alarms. However, when prior information is absent or very noisy, TS and LLR strategies achieve the lowest false-alarm rates for the Bernoulli, mixture-of-binomial, and classical sensor models.

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