MTG: Mapless Trajectory Generator with Traversability Coverage for Outdoor Navigation


Abstract

Abstract— We present a novel learning-based trajectory gen- eration algorithm for outdoor robot navigation. Our goal is to compute collision-free paths that also satisfy the environment- specific traversability constraints. Our approach is designed for global planning using limited onboard robot perception in mapless environments while ensuring comprehensive coverage of all traversable directions. Our formulation uses a Conditional Variational Autoencoder (CVAE) generative model that is enhanced with traversability constraints and an optimization formulation used for the coverage. We highlight the benefits of our approach over state-of-the-art trajectory generation approaches and demonstrate its performance in challenging and large outdoor environments, including around buildings, across intersections, along trails, and off-road terrain, using a Clearpath Husky and a Boston Dynamics Spot robot. In practice, our approach results in a 6% improvement in coverage of traversable areas and an 89% reduction in trajectory portions residing in non-traversable regions. Our video is here: https: //youtu.be/3eJ2soAzXnU

Proceedings
IEEE International Conference on Robotics and Automation (ICRA)
Date
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