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Tensor-based multiple denoising via successive spatial smoothing, low-rank approximation and reconstruction for R-D sensor array processing

机译:基于张量的多重去噪,通过连续的空间平滑,低秩近似和R-D传感器阵列处理的重建

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摘要

The parameter estimation problem from noisy signal measurements plays a key role in several practical applications in the array signal processing area ranging from telecommunications and radar to biomedical and acoustics. The performance of parameter estimation techniques is sensitive to the signal-tonoise ratio (SNR) and severely degrades in noisy scenarios. Classical denoising using SVD low-rank approximation and its tensor counterpart known as higher order SVD (HOSVD) have been widely applied as a preprocessing step to improve the SNR of the received signal. In this paper, we propose the tensor-based multiple denoising (MuDe) approach that successively applies spatial smoothing, denoising and reconstruction to the noisy data. By taking into account the knowledge of the model order and by exploiting subarrays created by the spatial smoothing, we can successively denoise the data by means of HOSVD-based and SVD-based low-rank approximation for tensor and matrix data, respectively. We show that our proposed approach significantly reduces the noise level, allowing a more accurate estimation of parameters compared to state-of-the-art matrix-based and tensor-based techniques without decreasing the sensor array aperture. (C) 2019 Elsevier Inc. All rights reserved.
机译:来自嘈杂信号测量的参数估计问题在阵列信号处理区域中的几个实际应用中起关键作用,从电信和雷达到生物医学和声学。参数估计技术的性能对信号 - 儿童比(SNR)敏感,并且严重降低了嘈杂的场景。使用SVD低秩近似的经典去噪和其称为高阶SVD(HOSVD)的张量对应物已被广泛应用于预处理步骤以改善接收信号的SNR。在本文中,我们提出了基于张量的多个去噪(Mude)方法,连续地应用空间平滑,去噪和重建对嘈杂的数据。通过考虑模型顺序的知识和通过空间平滑创建的子阵列,我们可以通过分别通过基于HOSVD和基于SVD的低秩近似来逐次地代替数据。我们表明我们所提出的方法显着降低了噪声水平,允许与最先进的基于矩阵和基于卷的技术相比,更准确地估计参数,而不降低传感器阵列孔。 (c)2019 Elsevier Inc.保留所有权利。

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