fpga上粒子滤波器的并行重采样

Shuanglong Liu, Grigorios Mingas, C. Bouganis
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引用次数: 21

摘要

粒子滤波(PFs)是一组实现递归贝叶斯滤波的算法,它通过一组加权样本来表示后验分布。重采样是PF算法中的一个基本操作。它包括取一组样本,并根据每个样本的权重对其进行重构,偏爱权重较大的样本。然而,当样本数量很大时,重采样是计算密集型的,最重要的是,它不像粒子滤波的其他步骤那样固有地可并行化。图形处理单元(gpu)和现场可编程门阵列(fpga)等并行计算设备已被提出用于加速重采样。在本文中,我们提出了一种新的并行架构,将四种最先进的重采样算法(系统、剩余系统、大都会和拒绝重采样)映射到FPGA上。引入特定于fpga的优化来进一步优化上述系统的性能。所提出的架构在Virtex-6 LX240T FPGA器件上实现,逻辑资源利用率为一半。与NVIDIA K20 GPU上各自最先进的实现相比,实现的加速在1.7x-49倍的范围内。
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Parallel resampling for particle filters on FPGAs
Particle filters (PFs) are a set of algorithms that implement recursive Bayesian filtering, which represent the posterior distribution by a set of weighted samples. Resampling is a fundamental operation in PF algorithms. It consists of taking a population of samples and reconstructing it based on the weights attached to each sample, favouring the samples with large weights. However, resampling is computationally intensive when the number of samples is large and, most importantly, it is not inherently parallelizable like the other steps of the particle filter. Parallel computing devices such as Graphics Processing Units (GPUs) and Field Programmable Gate Arrays (FPGAs) have been proposed to accelerate resampling. In this paper, we propose novel parallel architectures that map four state-of-the-art resampling algorithms (systematic, residual systematic, Metropolis and Rejection resampling) to a FPGA. FPGA-specific optimisations are introduced to further optimize the performance of the above systems. The proposed architectures are implemented in a Virtex-6 LX240T FPGA device with half-utilization of logic resources. Compared to the respective state-of-the-art implementations on an NVIDIA K20 GPU, the achieved speedups are in the range of 1.7x-49x.
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