Simultaneous localization and mapping for non-parametric potential field environments

James K. Murphy, S. Godsill
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引用次数: 4

Abstract

This paper introduces a new method of simultaneous object tracking (localization) and environment mapping for objects moving in a potential feld environment. Only weak non-parametric assumptions are made about the shape of the potential function using a Gaussian process prior. A second-and-a-half order numerical scheme for object motion in a potential feld is formulated and it is shown how to use this for potential inference. The method improves tracking performance in structured environments, as is illustrated by its application to urban car tracking. Hidden environmental structure such as the location of obstructions can also be revealed. Prior knowledge (e.g. from maps) can easily be incorporated and can then be updated using feedback from tracking. Information from multiple targets can also be handled in a straightforward manner.
非参数势场环境的同步定位和映射
针对势场环境中运动的物体,提出了一种同时进行目标跟踪(定位)和环境映射的新方法。仅使用高斯过程先验对势函数的形状进行弱非参数假设。给出了势场中物体运动的二阶半数值格式,并说明了如何用它进行势场推理。该方法提高了结构化环境下的跟踪性能,在城市汽车跟踪中的应用说明了这一点。隐藏的环境结构,如障碍物的位置也可以被揭示。先前的知识(例如地图)可以很容易地整合,然后可以使用跟踪反馈进行更新。来自多个目标的信息也可以以一种直接的方式处理。
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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