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Circular Accessible Depth: A Robust Traversability Representation for UGV Navigation

Shikuan Xie, Ran Song, Yuenan Zhao, Xueqin Huang, Yibin Li, Wei Zhang

2023IEEE Transactions on Robotics19 citationsDOI

Abstract

In this article, we present the circular accessible depth (CAD), a robust traversability representation for an unmanned ground vehicle (UGV) to learn traversability in various scenarios containing irregular obstacles. To predict CAD, we propose a neural network, namely CADNet, with an attention-based multiframe point cloud fusion module, stability-attention module (SAM), to encode the spatial features from point clouds captured by LiDAR. CAD is designed based on the polar coordinate system and focuses on predicting the border of traversable area. Since it encodes the spatial information of the surrounding environment, which enables a semisupervised learning for the CADNet, and thus, desirably avoids annotating a large amount of data. Extensive experiments demonstrate that CAD outperforms baselines in terms of robustness and precision. We also implement our method on a real UGV and show that it performs well in real-world scenarios.

Topics & Concepts

Point cloudRobustness (evolution)Artificial intelligenceComputer scienceCADComputer visionUnmanned ground vehicleENCODERepresentation (politics)Point (geometry)EngineeringEngineering drawingMathematicsPolitical scienceGeometryBiochemistryPoliticsGeneLawChemistryRobotics and Sensor-Based LocalizationRobotic Path Planning AlgorithmsMultimodal Machine Learning Applications
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