A Variational Approach to Mapping and Localization

A. Hogue, S. Khattak
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引用次数: 1

Abstract

A fundamental open problem in SLAM is the effective representation of the map in unknown, ambiguous, complex, dynamic environments. Representing such environments in a suitable manner is a complex task. Existing approaches to SLAM use map representations that store individual features (range measurements, image patches, or higher level semantic features) and their locations in the environment. The choice of how we represent the map produces limitations which in many ways are unfavourable for application in real-world scenarios. In this paper, we explore a new approach to SLAM that redefines sensing and robot motion as acts of deformation of a differentiable surface. Distance fields and level set methods are utilized to define a parallel to the components of the SLAM estimation process and an algorithm is developed and demonstrated. The variational framework developed is capable of representing complex dynamic scenes and spatially varying uncertainty for sensor and robot models.
映射和定位的变分方法
SLAM的一个基本开放问题是如何在未知、模糊、复杂、动态的环境中有效地表示地图。以合适的方式表示这样的环境是一项复杂的任务。现有的SLAM方法使用存储单个特征(距离测量、图像补丁或更高级别语义特征)及其在环境中的位置的地图表示。我们如何表示地图的选择产生了许多限制,这些限制在许多方面不利于在现实场景中的应用。在本文中,我们探索了一种SLAM的新方法,该方法将传感和机器人运动重新定义为可微表面的变形行为。利用距离场和水平集方法来定义与SLAM估计过程并行的组件,并开发和演示了一种算法。所开发的变分框架能够表示传感器和机器人模型的复杂动态场景和空间变化的不确定性。
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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