Artificial intelligence has undergone immense growth and maturation in recent years, though autonomous systems have traditionally struggled when fielded in diverse and previously unknown environments. DARPA is seeking to change that with the Subterranean Challenge, by providing roboticists the opportunity to support civilian and military first responders in complex and high-risk underground scenarios. The subterranean domain presents a handful of challenges, such as limited communication, diverse topology and terrain, and degraded sensing. Team MARBLE proposes a solution for autonomous exploration of unknown subterranean environments in which coordinated agents search for artifacts of interest. The team presents two navigation algorithms in the form of a metric-topological graph-based planner and a continuous frontier-based planner. To facilitate multi-agent coordination, agents share and merge new map information and candidate goal-points. Agents deploy communication beacons at different points in the environment, extending the range at which maps and other information can be shared. Onboard autonomy reduces the load on human supervisors, allowing agents to detect and localize artifacts and explore autonomously outside established communication networks. Given the scale, complexity, and tempo of this challenge, a range of lessons were learned, most importantly, that frequent and comprehensive field testing in representative environments is key to rapidly refining system performance.
翻译:近年来,人工智能经历了巨大的增长和成熟,尽管自治系统传统上在各种和以前未知的环境中打球时在不同的环境中挣扎不休,但自主系统近年来经历了巨大的增长和成熟,DARPA正寻求改变与Subterrane挑战有关的操作方法,为机器人学家提供机会,在复杂和高风险的地下情景下支持民用和军用第一反应者,为复杂和高风险的地下情景下,提供新的地图信息和候选目标点,为多剂协调、代理共享和合并新的地图信息和候选目标点提供便利,在环境的不同地点部署通信信标,扩大地图和其他信息的共享范围,MARBLE小组提出自主探索未知的地下环境的解决办法,在这种环境中协调物证物的探测和本地化,并探索外部自主的通信网络。该小组以一个基于图象的图象仪和持续的边际规划师的形式提出两种导航算法。鉴于这个挑战的规模、复杂性和速度,多剂协调、代理人共享和合并新的地图信息和候选目标点。代理人在环境的不同地点部署通信信标,扩大地图和其他信息的共享范围。机体自主性减少了人类督导师的负担,使代理人能够探测和本地搜索和探索已建立的通信网络。鉴于这个挑战的规模、复杂性、复杂性和速度,在最频繁的实地测试环境中,这是最经常的、最有代表性的实地经验。