A Parallel Resampling Algorithm for Particle Filtering on Shared-Memory Architectures

Peng Gong, Y. O. Basciftci, F. Özgüner
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引用次数: 24

Abstract

Many real-world applications such as positioning, navigation, and target tracking for autonomous vehicles require the estimation of some time-varying states based on noisy measurements made on the system. Particle filters can be used when the system model and the measurement model are not Gaussian or linear. However, the computational complexity of particle filters prevents them from being widely adopted. Parallel implementation will make particle filters more feasible for real-time applications. Effective resampling algorithms like the systematic resampling algorithm are serial. In this paper, we propose the shared-memory systematic resampling (SMSR) algorithm that is easily parallelizable on existing architectures. We verify the performance of SMSR on graphics processing units. Experimental results show that the proposed SMSR algorithm can achieve a significant speedup over the serial particle filter.
共享内存结构下粒子滤波的并行重采样算法
许多现实世界的应用,如自动驾驶汽车的定位、导航和目标跟踪,都需要基于对系统进行的噪声测量来估计一些时变状态。当系统模型和测量模型不是高斯模型或线性模型时,可以使用粒子滤波。然而,粒子滤波的计算复杂性阻碍了它的广泛应用。并行实现将使粒子滤波在实时应用中更加可行。有效的重采样算法,如系统重采样算法是串行的。本文提出了一种易于在现有体系结构上并行化的共享内存系统重采样(SMSR)算法。我们在图形处理单元上验证了SMSR的性能。实验结果表明,所提出的SMSR算法比串行粒子滤波器具有明显的加速效果。
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