Bayesian Rao test for distributed target detection in interference and noise with limited training data

April 17, 2025 Β· Declared Dead Β· πŸ› Science China Information Sciences

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Authors Daipeng Xiao, Weijian Liu, Jun Liu, Yuntao Wu, Qinglei Du, Xiaoqiang Hua arXiv ID 2504.13235 Category stat.ME Cross-listed cs.IT Citations 14 Venue Science China Information Sciences Last Checked 1 month ago
Abstract
This paper has studied the problem of detecting a range-spread target in interference and noise when the number of training data is limited. The interference is located within a certain subspace with an unknown coordinate, while the noise follows a Gaussian distribution with an unknown covariance matrix. We concentrate on the scenarios where the training data are limited and employ a Bayesian framework to ffnd a solution. Speciffcally, the covariance matrix is assumed to follow an inverse Wishart distribution. Then, we introduce the Bayesian detector according to the Rao test, which, demonstrated by both simulation experiment and real data, has superior detection performance to the existing detectors in certain situations.
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