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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE Transactions on >TDOA Estimation for Multiple Sound Sources in Noisy and Reverberant Environments Using Broadband Independent Component Analysis
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TDOA Estimation for Multiple Sound Sources in Noisy and Reverberant Environments Using Broadband Independent Component Analysis

机译:使用宽带独立分量分析的嘈杂和混响环境中多个声源的TDOA估计

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摘要

In this paper, we show that minimization of the statistical dependence using broadband independent component analysis (ICA) can be successfully exploited for acoustic source localization. As the ICA signal model inherently accounts for the presence of several sources and multiple sound propagation paths, the ICA criterion offers a theoretically more rigorous framework than conventional techniques based on an idealized single-path and single-source signal model. This leads to algorithms which outperform other localization methods, especially in the presence of multiple simultaneously active sound sources and under adverse conditions, notably in reverberant environments. Three methods are investigated to extract the time difference of arrival (TDOA) information contained in the filters of a two-channel broadband ICA scheme. While for the first, the blind system identification (BSI) approach, the number of sources should be restricted to the number of sensors, the other methods, the averaged directivity pattern (ADP) and composite mapped filter (CMF) approaches can be used even when the number of sources exceeds the number of sensors. To allow fast tracking of moving sources, the ICA algorithm operates in block-wise batch mode, with a proportionate weighting of the natural gradient to speed up the convergence of the algorithm. The TDOA estimation accuracy of the proposed schemes is assessed in highly noisy and reverberant environments for two, three, and four stationary noise sources with speech-weighted spectral envelopes as well as for moving real speech sources.
机译:在本文中,我们表明使用宽带独立分量分析(ICA)可以将统计依赖性的最小化成功地用于声源定位。由于ICA信号模型固有地考虑了多个声源和多个声音传播路径的存在,因此ICA标准比基于理想化的单路径和单声源信号模型的传统技术在理论上提供了更为严格的框架。这导致算法的性能优于其他定位方法,尤其是在存在多个同时激活的声源的情况下,并且在不利条件下,尤其是在混响环境中。研究了三种方法来提取包含在两通道宽带ICA方案的滤波器中的到达时间差(TDOA)信息。对于第一个盲系统识别(BSI)方法,应将光源数量限制为传感器数量,而其他方法,平均方向性图(ADP)和复合映射滤波器(CMF)方法甚至可以使用当光源数量超过传感器数量时。为了允许快速跟踪移动源,ICA算法以逐块批处理模式运行,并按比例对自然梯度进行加权,以加快算法的收敛速度。对于带有语音加权频谱包络的​​两个,三个和四个固定噪声源以及移动的真实语音源,在高噪声和混响环境中评估了所提方案的TDOA估计精度。

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