A Study and Comparison of Different Sparse Bayesian Learning Algorithms in DOA Estimation

Yuyang Shao, Hui Ma, Hongzhi Liu
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Abstract

The direction of arrival (DOA) is a typical sparse parameter estimation problem. Its solution methods include greedy algorithm, norm minimization method and Bayesian estimation, in which the Bayesian methods are superior in estimation accuracy, but huge amount of computation has become the bottle-neck. This paper analyzes and compares the computation complexity of sparse Bayesian learning (SBL), multi-task sparse Bayesian learning (MSBL) and inverse-free sparse Bayesian learning (IFSBL) in DOA estimation. Simulations are also provided and prove that IFSBL is much better than SBL and MSBL in operational efficiency.
不同稀疏贝叶斯学习算法在DOA估计中的研究与比较
到达方向(DOA)是一个典型的稀疏参数估计问题。其求解方法包括贪心算法、范数最小化法和贝叶斯估计,其中贝叶斯方法在估计精度上具有优势,但巨大的计算量成为瓶颈。仿真结果表明,IFSBL在运行效率上明显优于SBL和MSBL。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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