论文标题
高斯过程梯度图,用于在非结构化的行星环境中检测环闭合检测
Gaussian Process Gradient Maps for Loop-Closure Detection in Unstructured Planetary Environments
论文作者
论文摘要
识别先前映射位置的能力是自主系统的重要功能。由于地形的相似性,非结构化的行星样环境对这些系统构成了重大挑战。结果,视觉外观的歧义使最新的视觉位置识别的效果不如城市或人造环境。本文提出了一种仅使用空间信息来解决循环封闭问题的方法。关键思想是使用地形高度图的新型连续和概率表示。给定环境的3D点云,建议的方法利用线性操作员利用高斯过程(GP)回归,以生成地形高程信息的连续梯度图。然后,使用传统的图像注册技术来搜索潜在的匹配。通过利用高程图(SE(2)登记)和GP表示的概率性质的空间特征来验证环闭合。基于子限制的本地化和映射框架用于证明所提出方法的有效性。使用配备立体声摄像机的漫游车的真实数据评估和基准测试了这条管道的性能,并在摩洛哥和ETNA山上的具有挑战性的非结构化行星样环境中导航。
The ability to recognize previously mapped locations is an essential feature for autonomous systems. Unstructured planetary-like environments pose a major challenge to these systems due to the similarity of the terrain. As a result, the ambiguity of the visual appearance makes state-of-the-art visual place recognition approaches less effective than in urban or man-made environments. This paper presents a method to solve the loop closure problem using only spatial information. The key idea is to use a novel continuous and probabilistic representations of terrain elevation maps. Given 3D point clouds of the environment, the proposed approach exploits Gaussian Process (GP) regression with linear operators to generate continuous gradient maps of the terrain elevation information. Traditional image registration techniques are then used to search for potential matches. Loop closures are verified by leveraging both the spatial characteristic of the elevation maps (SE(2) registration) and the probabilistic nature of the GP representation. A submap-based localization and mapping framework is used to demonstrate the validity of the proposed approach. The performance of this pipeline is evaluated and benchmarked using real data from a rover that is equipped with a stereo camera and navigates in challenging, unstructured planetary-like environments in Morocco and on Mt. Etna.