TL;DR
SubTGraph is a framework for rapid, customizable synthesis of large-scale subterranean environments to enable rigorous validation and benchmarking of robotic autonomy systems in simulation.
Contribution
It introduces a novel environment generation method that creates diverse, configurable subterranean worlds for comprehensive robotic autonomy testing.
Findings
Validated structural semantic segmentation against ground truths.
Tested multi-agent path planning for pattern analysis.
Stress-tested LIO SLAM in challenging environments.
Abstract
Subterranean (SubT) environments have been a frontier for autonomous robotics, driven by the push for automation of mining operations and the interest in planetary exploration (Martian Lava Tubes). Due to the challenges involved in accessing real SubT environments, rigorous hardening of autonomy stacks in realistic simulation environments is critical. This article fills a well-known gap, which relates to the unavailability of a large-scale simulation-based benchmarking infrastructure for rigorous statistical evaluation of robotic autonomy, due to which it is common for SubT research articles to present validation results in a few environments at best. This article presents SubTGraph, a novel framework for rapid synthesis of multi-level SubT environments with high variability, incorporating user specifications related to topology, dimensionality, textures, etc., to generate distinct…
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