Research Analyzer
← Back ICRA 2023

GPF-BG: A Hierarchical Vision-Based Planning Framework for Safe Quadrupedal Navigation

Shiyu Feng, Ziyi Zhou, Justin Smith, Maxwell Asselmeier, Ye Zhao, Patricio Vela

PDF

Abstract

Safe quadrupedal navigation through unknown environments is a challenging problem. This paper proposes a hierarchical vision-based planning framework (GPF-BG) integrating our previous Global Path Follower (GPF) navigation system and a gap-based local planner using B ́ezier curves, so called B ́ezier Gap (BG). This BG-based trajectory synthesis can generate smooth trajectories and guarantee safety for point- mass robots. With a gap analysis extension based on non-point, rectangular geometry, safety is guaranteed for an idealized quadrupedal motion model and significantly improved for an actual quadrupedal robot model. Stabilized perception space improves performance under oscillatory internal body motions that impact sensing. Simulation-based and real experiments un- der different benchmarking configurations test safe navigation performance. GPF-BG has the best safety outcomes across all experiments.

Index terms

Vision-Based Navigation Legged Robots Reactive and Sensor-Based Planning