Learning Based Method for Robust DOA Estimation using Co-prime Circular Conformal Microphone Array

Raj Prakash Gohil, Gyanajyoti Routray, R. Hegde
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引用次数: 3

Abstract

Sound source localization in 1-Dimensional (1D) and 2-Dimensional (2D) is one of the most familiar problems in signal processing. Various types of microphone arrays and their geometry have been explored to find an optimal solution to this problem. The problem becomes more challenging for a reverberate and noisy environment. Localization of the source both in the azimuth and elevation increases the complexity further. In this paper, a convolutional neural network (CNN) based learning approach has been proposed to estimate the primary source in 2D space. Further, a noble co-prime circular conformal microphone array (C3MA) geometry has been developed for sound acquisition. The generalized cross-correlation with phase transform (GCC-PHAT)features have been extracted from the C3MA recordings, which are the input features for training purposes. The experimental results show that the learning-based estimation is more robust compared to the conventional signal processing approach. The learning-based approach also explores the GCC-PHAT features and can be adapted in an adverse acoustic environment. The performance of the proposed algorithm shows significant improvement in the root mean squared error (RMSE) and mean absolute error (MAE) scores compared to the available state-of-art methods.
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基于学习的共素圆共形传声器阵列鲁棒DOA估计方法
一维(1D)和二维(2D)声源定位是信号处理中最常见的问题之一。研究了各种类型的传声器阵列及其几何形状,以找到解决这一问题的最佳方案。对于混响和嘈杂的环境,这个问题变得更具挑战性。在方位角和高程上对源进行定位进一步增加了复杂性。本文提出了一种基于卷积神经网络(CNN)的学习方法来估计二维空间中的主源。此外,还开发了用于声音采集的高贵共素数圆形共形麦克风阵列(C3MA)几何结构。从C3MA记录中提取了广义相位互相关(GCC-PHAT)特征,这是用于训练目的的输入特征。实验结果表明,与传统的信号处理方法相比,基于学习的估计具有更强的鲁棒性。基于学习的方法还探索了GCC-PHAT的特征,并且可以在不利的声学环境中进行调整。与现有的方法相比,该算法在均方根误差(RMSE)和平均绝对误差(MAE)得分方面有显著提高。
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