DOA Estimation using Multiclass-SVM in Spherical Harmonics Domain

Priyadarshini Dwivedi, Gyanajyoti Routray, R. Hegde
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引用次数: 1

Abstract

Direction of arrival (DOA) estimation is still a challenging and fundamental problem in acoustic signal processing. This paper proposes a new method for DOA estimation that utilizes the support vector machine (SVM) based classification. The source signal is recorded by the spherical microphone array (SMA) and decomposed into the spherical harmonics domain. The phase and the magnitude features are calculated from the spherical harmonics (SH) decomposed signals. A multiclass support vector machine (M-SVM) algorithm is implemented to classify these phase and magnitude features to the DOA classes. Since the SVM is a non-probabilistic and deterministic model, it is computationally faster and highly reduced complexity than the neural network-based learning models. Extensive simulations are conducted for the performance evaluation of the proposed method. It is observed that the proposed model provides robust DOA estimates at various signal-to-noise ratios (SNR) and reverberation time. Performance evaluated in terms of the root mean square error (RMSE) provides interesting results motivating the use of the proposed model in practical applications.
球面谐波域多类支持向量机的DOA估计
到达方向估计仍然是声信号处理中一个具有挑战性和基础性的问题。本文提出了一种基于支持向量机(SVM)分类的DOA估计方法。源信号由球形传声器阵列(SMA)记录并分解成球谐波域。从球谐波分解后的信号中计算出相位和幅值特征。采用多类支持向量机(M-SVM)算法对这些相位和幅度特征进行DOA分类。由于支持向量机是一种非概率和确定性模型,因此与基于神经网络的学习模型相比,它的计算速度更快,复杂度也大大降低。为了对所提出的方法进行性能评估,进行了大量的仿真。观察到,所提出的模型在各种信噪比(SNR)和混响时间下提供了鲁棒的DOA估计。根据均方根误差(RMSE)评估的性能提供了有趣的结果,激励在实际应用中使用所提出的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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