An ICA-based RFS approach for DOA tracking of unknown time-varying numberof sources

A. Masnadi-Shirazi, B. Rao
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引用次数: 1

Abstract

Methods based on frequency-domain independent component analysis (ICA) in junction with state coherence transform (SCT) have been shown to be robust for extracting source location information like direction of Arrival (DOA) in highly reverberant environments and in the presence of spatial aliasing. Also, by exploiting the frequency sparsity of the sources, such methods have proven to be effective when the number of simultaneous sources is larger than the number of microphones. In many real world problems the number of concurrent speakers is unknown and varies with time as new speakers can appear and existing speakers can disappear or undergo silence periods. In order to deal with this challenging scenario of unknown time-varying number of speakers, we propose the use of the probability hypothesis density (PHD) filter which is based on random finite sets (RFS), where the multi-target states and the number of targets are integrated to form a set-valued variable. The tracking capabilities of the proposed method is demonstrated using simulations of multiple sources in reverberant environments.
一种基于ica的未知时变源DOA跟踪方法
基于频域独立分量分析(ICA)和状态相干变换(SCT)的方法已被证明在高混响环境和存在空间混叠的情况下提取源位置信息(如到达方向(DOA))具有鲁棒性。此外,通过利用源的频率稀疏性,当同时源的数量大于麦克风的数量时,这种方法已被证明是有效的。在现实世界的许多问题中,并发说话者的数量是未知的,并且随着时间的推移而变化,因为新的说话者可能出现,现有的说话者可能消失或经历沉默期。为了处理时变扬声器数量未知的挑战性场景,我们提出了基于随机有限集(RFS)的概率假设密度(PHD)滤波器,其中将多目标状态和目标数量整合成一个集值变量。通过对混响环境中多信号源的仿真,验证了所提方法的跟踪能力。
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