机器人
自治
人工智能
计算机科学
模块化设计
建筑
系统工程
人机交互
工程类
地理
考古
政治学
操作系统
法学
作者
Ali Agha,Kyohei Otsu,Benjamin Morrell,David D. Fan,Rohan Thakker,Àngel Santamaria‐Navarro,Sung-Kyun Kim,Amanda Bouman,Xianmei Lei,Jeffrey A. Edlund,Muhammad Fadhil Ginting,Kamak Ebadi,Matthew J. Anderson,Torkom Pailevanian,Edward D. Terry,Michael Wolf,Andrea Tagliabue,Tiago Vaquero,Matteo Palieri,Scott Tepsuporn
出处
期刊:Cornell University - arXiv
日期:2021-01-01
被引量:104
标识
DOI:10.48550/arxiv.2103.11470
摘要
This paper presents and discusses algorithms, hardware, and software architecture developed by the TEAM CoSTAR (Collaborative SubTerranean Autonomous Robots), competing in the DARPA Subterranean Challenge. Specifically, it presents the techniques utilized within the Tunnel (2019) and Urban (2020) competitions, where CoSTAR achieved 2nd and 1st place, respectively. We also discuss CoSTAR's demonstrations in Martian-analog surface and subsurface (lava tubes) exploration. The paper introduces our autonomy solution, referred to as NeBula (Networked Belief-aware Perceptual Autonomy). NeBula is an uncertainty-aware framework that aims at enabling resilient and modular autonomy solutions by performing reasoning and decision making in the belief space (space of probability distributions over the robot and world states). We discuss various components of the NeBula framework, including: (i) geometric and semantic environment mapping; (ii) a multi-modal positioning system; (iii) traversability analysis and local planning; (iv) global motion planning and exploration behavior; (i) risk-aware mission planning; (vi) networking and decentralized reasoning; and (vii) learning-enabled adaptation. We discuss the performance of NeBula on several robot types (e.g. wheeled, legged, flying), in various environments. We discuss the specific results and lessons learned from fielding this solution in the challenging courses of the DARPA Subterranean Challenge competition.
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