Distributed multiple speaker tracking based on time delay estimation in microphone array network

Rong Wang, Zhe Chen, F. Yin
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Abstract

Multiple speaker tracking in distributed microphone array (DMA) network is a challenging task. A critical issue for multiple speaker scenarios is to distinguish the ambiguous observation and associate it to the corresponding speaker, especially under reverberant and noisy environments. To address the problem, a distributed multiple speaker tracking method based on time delay estimation in DMA is proposed in this study. Specifically, the time delay estimated by the generalised crosscorrelation function is treated as an observation. In order to distinguish the observation for each speaker, the possible time delays, refer to as candidates, are extracted based on data association technique. Considering the ambient influence, a time delay estimation strategy is designed to calculate the time delay for each speaker from the candidates. Finally, only the reliable time delays in DMA are propagated throughout the whole network by diffusion fusion algorithm and used for updating the speakers' state within the distributed Kalman filter framework. The proposed approach can track multiple speakers successfully in a non-centralised manner under reverberant and noisy environments. Simulation results indicate that, compared with other methods, the proposed method can achieve a smaller root mean square error for multiple speaker tracking, especially in adverse conditions.
麦克风阵列网络中基于时延估计的分布式多说话人跟踪
分布式麦克风阵列(DMA)网络中的多扬声器跟踪是一项具有挑战性的任务。多扬声器场景的一个关键问题是区分模糊观察并将其与相应的扬声器联系起来,特别是在混响和噪声环境下。为了解决这一问题,本文提出了一种基于时延估计的分布式多说话人跟踪方法。具体地说,由广义互相关函数估计的时间延迟被视为观测值。为了区分每个说话人的观察结果,基于数据关联技术提取可能的时间延迟,称为候选时间延迟。考虑周围环境的影响,设计了一种时延估计策略,从候选发言者中计算每个发言者的时延。最后,通过扩散融合算法将DMA中可靠的时延传播到整个网络,并在分布式卡尔曼滤波框架内用于更新说话人的状态。该方法可以在混响和噪声环境下,以非集中的方式成功地跟踪多个说话人。仿真结果表明,与其他方法相比,该方法可以实现较小的多说话人跟踪均方根误差,特别是在不利条件下。
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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