Bi Chuan-Xing, Zhang Feng-Min, Zhang Xiao-Zheng, Zhang Yong-Bin, Zhou Rong
Institute of Sound and Vibration Research, Hefei University of Technology, 193 Tunxi Road, Hefei 230009, People's Republic of China.
J Acoust Soc Am. 2022 Apr;151(4):2378. doi: 10.1121/10.0010103.
Nearfield acoustic holography based on the compressed sensing theory can realize the accurate reconstruction of sound fields with fewer measurement points on the premise that an appropriate sparse basis is obtained. However, for different types of sound sources, the appropriate sparse bases are diverse and should be constructed elaborately. In this paper, a block sparse Bayesian learning (SBL) equivalent source method is proposed for realizing the reconstruction of the sound fields radiated by different types of sources, including the spatially sparse sources, the spatially extended sources, and the mixed ones of the above two, without the elaborate construction of the sparse basis. The proposed method constructs a block sparse equivalent source model and promotes a block sparse solution by imposing a structured prior on the equivalent source model and estimating the posterior of the model by using the SBL, which can achieve the accurate reconstruction of the radiated sound fields of different types of sources simply by adjusting the block size. Numerical simulation and experimental results demonstrate the validity and superiority of the proposed method, and the effects of two key parameters, the block size, and sparsity pruning threshold value are investigated through simulations.
基于压缩感知理论的近场声全息技术能够在获得合适稀疏基的前提下,用较少的测量点实现声场的精确重建。然而,对于不同类型的声源,合适的稀疏基各不相同,需要精心构建。本文提出了一种块稀疏贝叶斯学习(SBL)等效源方法,用于实现不同类型声源(包括空间稀疏声源、空间扩展声源以及上述两者的混合声源)辐射声场的重建,而无需精心构建稀疏基。该方法构建了一个块稀疏等效源模型,并通过对等效源模型施加结构化先验以及使用SBL估计模型的后验来促进块稀疏解,只需调整块大小就能实现不同类型声源辐射声场的精确重建。数值模拟和实验结果验证了该方法的有效性和优越性,并通过模拟研究了两个关键参数(块大小和稀疏性修剪阈值)的影响。