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An improved method to localize simultaneously close and coherent sources based on symmetric-Toeplitz covariance matrix

机译:基于对称Toeplitz协方差矩阵定位同时密切和相干源的改进方法

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There is a need to develop better algorithms for resolving multiple sound sources which are close or coherent. The Multiple Signal Classification method works satisfactorily in such situations when used along with spatial smoothing only when the SNR is high and array size is large. The MUSIC-Group Delay (MGD) method when used in conjunction with spatial smoothing works even for low SNR signals coming from close and coherent sources. However, it is computationally expensive and needs large arrays. To address these limitations, we propose the Improved MGD (IMGD) method which uses a symmetric-Toeplitz matrix derived from covariance matrices of regular sensor data and their conjugates for calculating the direction of arrival of sound sources. Such a method will work for close sources as we have shown that noise subspaces of conventional and symmetric-Toeplitz covariance matrices as well as phase characteristics of MUSIC spectra derived from these matrices are equivalent. Such a method will also work for coherent sources as we have shown that the spatially smoothened symmetric-Toeplitz covariance matrix, very much like the ordinary covariance matrix used for non-coherent sources, is positive semi-definite. In this way we have established the mathematical validity of the IMGD method. Next, we conducted several simulations to compare the efficacy of the proposed method relative to the MGD method. Our results show that the proposed method markedly performs better in terms of accuracy, and resolution capability. Finally, we also conducted experiments to validate the proposed method. Our experimental data show that the IMGD method is better than MGD in all aspects significantly. (C) 2021 Elsevier Ltd. All rights reserved.
机译:需要开发更好的算法,用于解析密切或连贯的多个声源。当仅当SNR高并且阵列尺寸大时,多信号分类方法随着空间平滑而使用时,在这种情况下令人满意地起作用。即使对于来自近距离和相干源的低SNR信号,音乐组延迟(MGD)方法也适用于空间平滑工作。但是,它是计算昂贵的并且需要大阵列。为了解决这些限制,我们提出了一种改进的MGD(IMGD)方法,该方法使用常规传感器数据的协方差矩阵和它们的缀合物来计算声源的到达方向。这样的方法将用于密切源,因为我们已经示出了传统和对称Toeplitz协方差矩阵以及从这些矩阵导出的音乐光谱的相位特征的噪声子空间是等效的。这种方法还将用于相干来源,因为我们已经示出了空间平滑的对称toeplitz协方差矩阵,非常像用于非相干源的普通协方差矩阵,是正半定的。通过这种方式,我们建立了IMGD方法的数学有效性。接下来,我们进行了多次模拟以比较所提出的方法相对于MGD方法的功效。我们的结果表明,该方法在准确性和分辨率能力方面显着表现更好。最后,我们还进行了实验以验证提出的方法。我们的实验数据表明,IMGD方法在各方面明显优于MGD。 (c)2021 elestvier有限公司保留所有权利。

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