Sound Source Localization Method Based on Densely Connected Convolutional Neural Network

Ge Zhang, Lin Geng, Xingguo Chen
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Abstract

Beamforming and deconvolution techniques play a significant role in identifying sound sources. However, it is commonly known that conventional beamforming (CBF) is difficult to identify sound sources accurately due to its inherent drawbacks, including low spatial resolution and small dynamic ranges, while deconvolution methods are burdened with huge computational costs and fail to provide reliable results. Aiming to overcome the restrictions of conventional beamforming and deconvolution methods, a novel sound source localization method combining conventional beamforming with a deep learning method is proposed. In this paper, the sound source localization task is framed as an image prediction task. Firstly, conventional beamforming (CBF) is utilized for obtaining the initial sound source spatial distribution maps. Secondly, a target map is designed as the ground truth label for training. Then a densely connected convolutional neural network (DCFCN) with an encoder-decoder structure is established for extracting features from CBF maps and predicting the spatial distribution of a single sound source. Finally, the position of a single sound source can be retrieved from the predicted maps generated by DCFCN. Simulations are carried out to verify the effectiveness of the proposed method by comparing it with several traditional sound source localization methods. Results suggest that the proposed method can not only significantly improve the spatial resolution and dynamic range of CBF but also achieve accurate localization with high computational efficiency.
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基于密集连接卷积神经网络的声源定位方法
波束形成和反卷积技术在声源识别中起着重要的作用。然而,众所周知,传统波束形成(CBF)由于其固有的缺点,包括低空间分辨率和小动态范围,难以准确识别声源,而反褶积方法负担巨大的计算成本,无法提供可靠的结果。针对传统波束形成和反卷积方法的局限性,提出了一种将传统波束形成与深度学习相结合的声源定位方法。本文将声源定位任务框定为图像预测任务。首先,利用传统波束形成技术获得初始声源空间分布图;其次,设计目标图作为训练的真值标签;在此基础上,建立了一种具有编码器-解码器结构的密集连接卷积神经网络(DCFCN),用于从CBF图中提取特征并预测单个声源的空间分布。最后,从DCFCN生成的预测图中检索单个声源的位置。通过与几种传统声源定位方法的比较,仿真验证了该方法的有效性。结果表明,该方法不仅能显著提高CBF的空间分辨率和动态范围,而且能以较高的计算效率实现精确定位。
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