基于重要性采样的贝叶斯DOA估计
Bayesian Maximum A Posterior DOA Estimator Based on Importance Sampling
本文为减小贝叶斯DOA估计方法的计算量,将重要性采样与贝叶斯方法相结合,提出了基于重要性采样的贝叶斯最大后验DOA估计方法,并给出了该方法的详细的理论推导。研究结果表明,该新方法不仅具有贝叶斯多目标高分辨方法的优越性能,而且还降低了原贝叶斯方法计算的复杂程度;与MUSIC和 MiniNorm相比,该新方法性能更好,尤其是在低信噪比情况下。
OA estimation is an important research area in array signal processing. Bayesian maximum a posterior probability density DOA estimator (BM DOA estimator) has been shown to perform perfectly. However, the BM estimator requires a multidimensional grid search and the computational burden increases exponentially with the dimension. So it is difficult to be used in realtime applications. In order to reduce the computation, Monte Carlo methods are combined with BM DOA estimator. A novel Bayesian maximum a posterior DOA estimator based on importance sampling (ISBM DOA estimator) is proposed in this paper. ISBM DOA estimator not only keeps the good performance of the original BM DOA estimator, but also reduces the computation obviously because it needs not multidimensional search and reduces the computational complexity of the original method from to . Simulation results show that ISBM DOA estimator keeps the superior performance of BM DOA estimator, but also reduces the computation evidently and performs better than MUSIC and MiniNorm, especially in the case of low SNRs.
张群飞、李雄、黄建国、谢达
通信无线通信电子对抗
OA,贝叶斯,重要性采样,计算量
OA Bayesian importance sampling computation
张群飞,李雄,黄建国,谢达.基于重要性采样的贝叶斯DOA估计[EB/OL].(2005-12-29)[2025-08-04].http://www.paper.edu.cn/releasepaper/content/200512-754.点此复制
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