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基于同态反卷积和线性回归的单通道多接收器声源定位系统

Single-Channel Multiple-Receiver Sound Source Localization System with Homomorphic Deconvolution and Linear Regression.

作者信息

Park Yeonseok, Choi Anthony, Kim Keonwook

机构信息

Division of Electronics & Electrical Engineering, Dongguk University-Seoul, Seoul 04620, Korea.

Department of Electrical & Computer Engineering, Mercer University, 1501 Mercer University Drive, Macon, GA 31207, USA.

出版信息

Sensors (Basel). 2021 Jan 23;21(3):760. doi: 10.3390/s21030760.

Abstract

The conventional sound source localization systems require the significant complexity because of multiple synchronized analog-to-digital conversion channels as well as the scalable algorithms. This paper proposes a single-channel sound localization system for transport with multiple receivers. The individual receivers are connected by the single analog microphone network which provides the superimposed signal over simple connectivity based on asynchronized analog circuit. The proposed system consists of two computational stages as homomorphic deconvolution and machine learning stage. A previous study has verified the performance of time-of-flight estimation by utilizing the non-parametric and parametric homomorphic deconvolution algorithms. This paper employs the linear regression with supervised learning for angle-of-arrival prediction. Among the circular configurations of receiver positions, the optimal location is selected for three-receiver structure based on the extensive simulations. The non-parametric method presents the consistent performance and Yule-Walker parametric algorithm indicates the least accuracy. The Steiglitz-McBride parametric algorithm delivers the best predictions with reduced model order as well as other parameter values. The experiments in the anechoic chamber demonstrate the accurate predictions in proper ensemble length and model order.

摘要

传统的声源定位系统由于需要多个同步的模数转换通道以及可扩展算法,因而具有显著的复杂性。本文提出了一种用于运输的带有多个接收器的单通道声音定位系统。各个接收器通过单个模拟麦克风网络连接,该网络基于异步模拟电路通过简单连接提供叠加信号。所提出的系统由同态反卷积和机器学习两个计算阶段组成。先前的一项研究通过使用非参数和参数同态反卷积算法验证了飞行时间估计的性能。本文采用线性回归和监督学习来进行到达角预测。在接收器位置的圆形配置中,基于广泛的模拟为三接收器结构选择了最佳位置。非参数方法表现出一致的性能,而尤尔-沃克参数算法的准确性最低。施蒂格利茨-麦克布赖德参数算法在降低模型阶数以及其他参数值的情况下提供了最佳预测。在消声室中的实验证明了在适当的总体长度和模型阶数下的准确预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1f1f/7866145/758e229b6688/sensors-21-00760-g004.jpg

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