Robots excel in performing repetitive and precision-sensitive tasks in controlled environments such as warehouses and factories, but have not been yet extended to embodied AI agents providing assistance in household tasks. Inspired by the catalyzing effect that benchmarks have played in the AI fields such as computer vision and natural language processing, the community is looking for new benchmarks for embodied AI. Prior work in embodied AI benchmark defines tasks using a different formalism, often specific to one environment, simulator or domain, making it hard to develop general and comparable solutions. In this work, we bring a subset of BEHAVIOR activities into Habitat 2.0 to benefit from its fast simulation speed, as a first step towards demonstrating the ease of adapting activities defined in the logic space into different simulators.
翻译:机器人在仓库和工厂等受控制环境中出色地执行重复和精确敏感的任务,但尚未扩大到在家务任务方面提供援助的具有内含的AI代理商。由于在计算机视觉和自然语言处理等AI领域的基准所起到的催化作用,社区正在寻找体现AI的新基准。以前在AI中体现的AI基准的工作利用一种不同的形式主义来界定任务,通常是针对一个环境、模拟器或域,使得很难制定一般性和可比的解决办法。在这项工作中,我们把BEHAVIOR活动的一组部分纳入Hodon 2.0,以便从其快速模拟速度中获益,作为表明逻辑空间界定的活动容易适应不同模拟器的第一步。