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NON-ZERO DIFFUSION PARTICLE FLOW SMC-PHD FILTER FOR AUDIO-VISUAL MULTI-SPEAKER TRACKING

机译:用于视听多扬声器跟踪的非零扩散粒子流量SMC-PHD滤波器

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摘要

The sequential Monte Carlo probability hypothesis density (SMC-PHD) filter has been shown to be promising for audio-visual multi-speaker tracking. Recently, the zero diffusion particle flow (ZPF) has been used to mitigate the weight degeneracy problem in the SMC-PHD filter. However, this leads to a substantial increase in the computational cost due to the migration of particles from prior to posterior distribution with a partial differential equation. This paper proposes an alternative method based on the non-zero diffusion particle flow (NPF) to adjust the particle states by fitting the particle distribution with the posterior probability density using the nonzero diffusion. This property allows efficient computation of the migration of particles. Results from the AV16.3 dataset demonstrate that we can significantly mitigate the weight degeneracy problem with a smaller computational cost as compared with the ZPF based SMC-PHD filter.
机译:序贯蒙特卡罗概率假设密度(SMC-PHD)过滤器已被证明对视听多扬声器跟踪有望。最近,已经使用零扩散粒子流(ZPF)来减轻SMC-PHD滤波器中的重量退化问题。然而,这导致计算成本的显着增加,由于颗粒在后部分布之前的颗粒与部分微分方程。本文提出了一种基于非零扩散颗粒流(NPF)的替代方法,以通过使用非零扩散将粒子分布与后验概率密度配合来调节粒子状态。此属性允许有效地计算粒子的迁移。 AV16.3数据集的结果表明,与基于ZPF的SMC-PHD滤波器相比,我们可以通过较小的计算成本显着降低重量退化问题。

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