Parralelization of non-linear & non-Gaussian Bayesian state estimators (Particle filters)

Amin Jarrah, M. Jamali, Seyyed Soheil Sadat Hosseini, J. Astola, M. Gabbouj
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引用次数: 3

Abstract

Particle filter has been proven to be a very effective method for identifying targets in non-linear and non-Gaussian environment. However, particle filter is computationally intensive and may not achieve the real time requirements. So, it's desirable to implement it on parallel platforms by exploiting parallel and pipelining architecture to achieve its real time requirements. In this work, an efficient implementation of particle filter in both FPGA and GPU is proposed. Particle filter has also been implemented using MATLAB Parallel Computing Toolbox (PCT). Experimental results show that FPGA and GPU architectures can significantly outperform an equivalent sequential implementation. The results also show that FPGA implementation provides better performance than the GPU implementation. The achieved execution time on dual core and quad core Dell PC using PCT were higher than FPGAs and GPUs as was expected.
非线性&非高斯贝叶斯状态估计器的并行化(粒子滤波)
粒子滤波已被证明是一种在非线性和非高斯环境下非常有效的目标识别方法。然而,粒子滤波计算量大,可能无法达到实时性要求。因此,需要在并行平台上通过利用并行和流水线架构来实现其实时需求。本文提出了一种在FPGA和GPU上有效实现粒子滤波的方法。用MATLAB并行计算工具箱(PCT)实现了粒子滤波。实验结果表明,FPGA和GPU架构的性能明显优于等效的顺序实现。结果还表明,FPGA实现比GPU实现提供了更好的性能。使用PCT在双核和四核戴尔PC上实现的执行时间比预期的fpga和gpu要高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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