Wideband DOA estimation by joint sparse representation under Bayesian learning framework

Lu Wang, Lifan Zhao, G. Bi, C. Wan
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引用次数: 3

Abstract

Wideband direction of arrival (DOA) estimation is a practical problem frequently occurring in sonar application. Compared to the entire angular domain, targets only occupy a few directions and the received signals are considered to be sparse in the angular domain. It is further noted that signals in different spectrum bands show a strong joint sparsity due to the fact that targets from different directions share the spectrum. This paper exploits the joint sparsity of the signals and reformulates the DOA estimation problem under the Bayesian learning framework. The resulted method is a data-driven learning process and does not need the tedious parameter tuning. Comparing to the conventional delay-sum beamformer, the proposed method has the advantages of reduced number of sensors, reduced spatial aliasing and increased resolution. The improved performance is validated by real sonar data experiments.
贝叶斯学习框架下联合稀疏表示的宽带DOA估计
宽带到达方向估计是声纳应用中经常遇到的一个实际问题。与整个角域相比,目标只占据几个方向,在角域内接收到的信号被认为是稀疏的。进一步指出,由于来自不同方向的目标共享频谱,不同频谱带的信号表现出很强的联合稀疏性。利用信号的联合稀疏性,重新提出了贝叶斯学习框架下的DOA估计问题。所得到的方法是一个数据驱动的学习过程,不需要繁琐的参数调优。与传统的延迟和波束形成器相比,该方法具有减少传感器数量、减少空间混叠和提高分辨率的优点。通过实际声纳数据实验验证了改进后的性能。
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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