Towards lifelong feature-based mapping in semi-static environments

David M. Rosen, Julian Mason, J. Leonard
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引用次数: 68

Abstract

The feature-based graphical approach to robotic mapping provides a representationally rich and computationally efficient framework for an autonomous agent to learn a model of its environment. However, this formulation does not naturally support long-term autonomy because it lacks a notion of environmental change; in reality, “everything changes and nothing stands still, ” and any mapping and localization system that aims to support truly persistent autonomy must be similarly adaptive. To that end, in this paper we propose a novel feature-based model of environmental evolution over time. Our approach is based upon the development of an expressive probabilistic generative feature persistence model that describes the survival of abstract semi-static environmental features over time. We show that this model admits a recursive Bayesian estimator, the persistence filter, that provides an exact online method for computing, at each moment in time, an explicit Bayesian belief over the persistence of each feature in the environment. By incorporating this feature persistence estimation into current state-of-the-art graphical mapping techniques, we obtain a flexible, computationally efficient, and information-theoretically rigorous framework for lifelong environmental modeling in an ever-changing world.
在半静态环境中实现基于特征的终身映射
基于特征的机器人绘图方法为自主代理学习其环境模型提供了一个表征丰富且计算效率高的框架。然而,这种提法自然不支持长期自治,因为它缺乏环境变化的概念;在现实中,“一切都在变化,没有什么是不变的”,任何旨在支持真正持久自治的地图和定位系统都必须具有类似的适应性。为此,在本文中,我们提出了一种新的基于特征的环境进化模型。我们的方法是基于一种表达性概率生成特征持久性模型的发展,该模型描述了抽象半静态环境特征随时间的生存。我们表明,该模型允许一个递归贝叶斯估计器,即持久性过滤器,它提供了一种精确的在线方法,用于在每个时刻计算环境中每个特征的持久性的显式贝叶斯信念。通过将这种特征持久性估计结合到当前最先进的图形映射技术中,我们获得了一个灵活的、计算效率高的、信息理论上严格的框架,用于在不断变化的世界中进行终身环境建模。
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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