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Extension of sound field separation technique based on the equivalent source method in a sparsity framework

机译:基于稀疏性框架中等效源法的声场分离技术扩展

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The equivalent source method (ESM)-based sound field separation technique has been successfully introduced into near-field acoustic holography as a preprocessing tool to eliminate the influence of disturbing sources or reflections from the opposite side of the array. In this paper, that technique is further extended in a sparsity framework, which makes it possible to take the advantage of the theory of compressive sensing to achieve reasonable separation accuracy with a limited number of spatial sampling points. In this study, three sparse bases are considered, including two existing bases that are suitable for spatially sparse and spatially extended sources, respectively, and a more flexible, redundant sparse basis that is constructed by combining the two sparse bases above, and the l(1) - norm minimization is used to promote sparse solutions. Numerical simulation and experimental results demonstrate the validity of the proposed technique and show the superiority of the use of the redundant sparse basis. Besides, the effects of the relative strength of the target source to the disturbing source, the number of spatial sampling points and the signal-to-noise ratio on the separation accuracy are analyzed numerically. (C) 2018 Elsevier Ltd. All rights reserved.
机译:基于近场声学全息术的等效源方法(ESM)的基站分离技术作为预处理工具,以消除扰乱源或来自阵列的相对侧的反射的影响。在本文中,该技术进一步在稀疏性框架中延伸,这使得可以采取压缩感测理论的优点,以实现具有有限数量的空间采样点来实现合理的分离精度。在这项研究中,考虑了三个稀疏基质,包括两个现有的基座,它们分别适用于空间稀疏和空间延伸的源,并通过组合上述两个稀疏基础构成的更灵活,冗余的稀疏基础,以及L( 1) - 符号最小化用于促进稀疏解决方案。数值模拟和实验结果表明了所提出的技术的有效性,并显示了使用冗余稀疏基础的优越性。此外,在数值上分析了目标源对扰动源的相对强度与扰动源的影响,空间采样点的数量和对分离精度的信噪比。 (c)2018年elestvier有限公司保留所有权利。

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