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首页> 外文期刊>EURASIP journal on applied signal processing >Particle Filter Design Using Importance Sampling for Acoustic Source Localisation and Tracking in Reverberant Environments
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Particle Filter Design Using Importance Sampling for Acoustic Source Localisation and Tracking in Reverberant Environments

机译:在混响环境中使用重要采样的粒子滤波器设计用于声源定位和跟踪

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摘要

Sequential Monte Carlo methods have been recently proposed to deal with the problem of acoustic source localisation and tracking using an array of microphones. Previous implementations make use of the basic bootstrap particle filter, whereas a more general approach involves the concept of importance sampling. In this paper, we develop a new particle filter for acoustic source localisation using importance sampling, and compare its tracking ability with that of a bootstrap algorithm proposed previously in the literature. Experimental results obtained with simulated reverberant samples and real audio recordings demonstrate that the new algorithm is more suitable for practical applications due to its reinitialisation capabilities, despite showing a slightly lower average tracking accuracy. A real-time implementation of the algorithm also shows that the proposed particle filter can reliably track a person talking in real reverberant rooms.
机译:最近已经提出了顺序蒙特卡洛方法来处理使用麦克风阵列的声源定位和跟踪的问题。先前的实现使用基本的自举粒子过滤器,而更通用的方法涉及重要性采样的概念。在本文中,我们使用重要性采样技术开发了一种用于声源定位的新型粒子滤波器,并将其跟踪能力与文献中先前提出的自举算法相比较。通过模拟混响样本和真实音频记录获得的实验结果表明,尽管算法具有较低的平均跟踪精度,但由于其具有重新初始化功能,因此它更适合实际应用。该算法的实时实现还表明,所提出的粒子滤波器可以可靠地跟踪在真实混响室内说话的人。

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