ROCVSep 1, 2020

Gaussian Process Gradient Maps for Loop-Closure Detection in Unstructured Planetary Environments

arXiv:2009.00221v13 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of visual ambiguity in autonomous navigation for planetary exploration, though it is an incremental improvement over existing methods.

The paper tackles loop-closure detection in unstructured planetary environments by using Gaussian Process gradient maps of terrain elevation, achieving validation with real rover data from Morocco and Mt. Etna.

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.

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