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Autores principales: Xu, Dazhuan, Wang, Nan, Zhang, Han, Kong, Xiaolong
Formato: Preprint
Publicado: 2021
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Acceso en línea:https://arxiv.org/abs/2109.09941
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author Xu, Dazhuan
Wang, Nan
Zhang, Han
Kong, Xiaolong
author_facet Xu, Dazhuan
Wang, Nan
Zhang, Han
Kong, Xiaolong
contents In this paper, we solve the optimal target detection problem employing the thoughts and methodologies of Shannon's information theory. Introducing a target state variable into a general radar system model, an equivalent detection channel is derived, and the a posteriori probability distribution is given accordingly. Detection information (DI) is proposed for measuring system performance, which holds for any specific detection method. Moreover, we provide an analytic expression for the false alarm probability concerning the a priori probability. In particular, for a sufficiently large observation interval, the false alarm probability equals the a priori probability of the existing state. A stochastic detection method, the sampling a posteriori probability, is also proposed. The target detection theorem is proved mathematically, which indicates that DI is an achievable theoretical limit of target detection. Specifically, when empirical DI is gained from the sampling a posteriori detection method approaches the DI, the probability of failed decisions tends to be zero. Conversely, there is no detector whose empirical DI is more than DI. Numerical simulations are performed to verify the correctness of the theorems. The results demonstrate that the maximum a posteriori and the Neyman-Pearson detection methods are upper bounded by the theoretical limit.
format Preprint
id arxiv_https___arxiv_org_abs_2109_09941
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle The Theoretical Limit of Radar Target Detection
Xu, Dazhuan
Wang, Nan
Zhang, Han
Kong, Xiaolong
Information Theory
Performance
In this paper, we solve the optimal target detection problem employing the thoughts and methodologies of Shannon's information theory. Introducing a target state variable into a general radar system model, an equivalent detection channel is derived, and the a posteriori probability distribution is given accordingly. Detection information (DI) is proposed for measuring system performance, which holds for any specific detection method. Moreover, we provide an analytic expression for the false alarm probability concerning the a priori probability. In particular, for a sufficiently large observation interval, the false alarm probability equals the a priori probability of the existing state. A stochastic detection method, the sampling a posteriori probability, is also proposed. The target detection theorem is proved mathematically, which indicates that DI is an achievable theoretical limit of target detection. Specifically, when empirical DI is gained from the sampling a posteriori detection method approaches the DI, the probability of failed decisions tends to be zero. Conversely, there is no detector whose empirical DI is more than DI. Numerical simulations are performed to verify the correctness of the theorems. The results demonstrate that the maximum a posteriori and the Neyman-Pearson detection methods are upper bounded by the theoretical limit.
title The Theoretical Limit of Radar Target Detection
topic Information Theory
Performance
url https://arxiv.org/abs/2109.09941