English

Visual-Geometry GP-based Navigable Space for Autonomous Navigation

Robotics 2024-07-10 v1

Abstract

Autonomous navigation in unknown environments is challenging and demands the consideration of both geometric and semantic information in order to parse the navigability of the environment. In this work, we propose a novel space modeling framework, Visual-Geometry Sparse Gaussian Process (VG-SGP), that simultaneously considers semantics and geometry of the scene. Our proposed approach can overcome the limitation of visual planners that fail to recognize geometry associated with the semantic and the geometric planners that completely overlook the semantic information which is very critical in real-world navigation. The proposed method leverages dual Sparse Gaussian Processes in an integrated manner; the first is trained to forecast geometrically navigable spaces while the second predicts the semantically navigable areas. This integrated model is able to pinpoint the overlapping (geometric and semantic) navigable space. The simulation and real-world experiments demonstrate that the ability of the proposed VG-SGP model, coupled with our innovative navigation strategy, outperforms models solely reliant on visual or geometric navigation algorithms, highlighting a superior adaptive behavior.

Keywords

Cite

@article{arxiv.2407.06545,
  title  = {Visual-Geometry GP-based Navigable Space for Autonomous Navigation},
  author = {Mahmoud Ali and Durgkant Pushp and Zheng Chen and Lantao Liu},
  journal= {arXiv preprint arXiv:2407.06545},
  year   = {2024}
}

Comments

This paper has been accepted for publication at 2024 IEEE/RSJ International Conference on Intelligent Robots and Systems ( IROS 2024)