Online Grounding of Symbolic Planning Domains in Unknown Environments

Leonardo Lamanna, L. Serafini, A. Saetti, A. Gerevini, P. Traverso
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引用次数: 3

Abstract

If a robotic agent wants to exploit symbolic planning techniques to achieve some goal, it must be able to properly ground an abstract planning domain in the environment in which it operates. However, if the environment is initially unknown by the agent, the agent needs to explore it and discover the salient aspects of the environment necessary to reach its goals. Namely, the agent has to discover: (i) the objects present in the environment, (ii) the properties of these objects and their relations, and finally (iii) how abstract actions can be successfully executed. The paper proposes a framework that aims to accomplish the aforementioned perspective for an agent that perceives the environment partially and subjectively, through real value sensors (e.g., GPS, and on-board camera) and can operate in the environment through low level actuators (e.g., move forward of 20 cm). We evaluate the proposed architecture in photo-realistic simulated environments, where the sensors are RGB-D on-board camera, GPS and compass, and low level actions include movements, grasping/releasing objects, and manipulating objects. The agent is placed in an unknown environment and asked to find objects of a certain type, place an object on top of another, close or open an object of a certain type. We compare our approach with a state of the art method on object goal navigation based on reinforcement learning, showing better performances.
未知环境下符号规划域的在线接地
如果机器人代理想要利用符号规划技术来实现某些目标,它必须能够在其操作的环境中适当地建立一个抽象的规划域。然而,如果环境最初对智能体来说是未知的,那么智能体需要探索它,并发现达到其目标所必需的环境的突出方面。也就是说,代理必须发现:(i)环境中存在的对象,(ii)这些对象的属性及其关系,最后(iii)如何成功执行抽象动作。本文提出了一个框架,旨在为通过真实值传感器(例如GPS和车载摄像头)部分主观地感知环境的智能体实现上述视角,并可以通过低水平执行器(例如向前移动20厘米)在环境中操作。我们在逼真的模拟环境中评估了所提出的架构,其中传感器是RGB-D车载相机,GPS和指南针,低层动作包括运动,抓取/释放物体和操纵物体。agent被置于一个未知的环境中,并被要求寻找某种类型的对象,将一个对象放在另一个对象的上面,关闭或打开某种类型的对象。我们将我们的方法与基于强化学习的对象目标导航的最新方法进行了比较,显示出更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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