Analyzing gaussian proposal distributions for mapping with rao-blackwellized particle filters

C. Stachniss, G. Grisetti, Wolfram Burgard, N. Roy
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引用次数: 43

Abstract

Particle filters are a frequently used filtering technique in the robotics community. They have been successfully applied to problems such as localization, mapping, or tracking. The particle filter framework allows the designer to freely choose the proposal distribution which is used to obtain the next generation of particles in estimating dynamical processes. This choice greatly influences the performance of the filter. Many approaches have achieved good performance through informed proposals which explicitly take into account the current observation. A popular approach is to approximate the desired proposal distribution by a Gaussian. This paper presents a statistical analysis of the quality of such Gaussian approximations. We also propose a way to obtain the optimal proposal in a non-parametric way and then identify the error introduced by the Gaussian approximation. Furthermore, we present an alternative sampling strategy that better deals with situations in which the target distribution is multi-modal. Experimental results indicate that our alternative sampling strategy leads to accurate maps more frequently that the Gaussian approach while requiring only minimal additional computational overhead.
分析高斯建议分布与rao-blackwell化粒子滤波器的映射
粒子滤波是机器人社区中常用的一种滤波技术。它们已经成功地应用于诸如定位、映射或跟踪等问题。粒子滤波框架允许设计者在动态过程估计中自由选择用于获得下一代粒子的建议分布。这种选择极大地影响了过滤器的性能。许多方法通过明确考虑当前观察结果的知情建议取得了良好的性能。一种流行的方法是用高斯分布近似期望的提议分布。本文对这种高斯近似的质量进行了统计分析。我们还提出了一种以非参数方式获得最优建议的方法,然后识别高斯近似引入的误差。此外,我们提出了一种替代抽样策略,可以更好地处理目标分布是多模态的情况。实验结果表明,我们的替代采样策略比高斯方法更频繁地产生准确的映射,同时只需要最小的额外计算开销。
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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