To effectively use an abstract (PDDL) planning domain to achieve goals in an unknown environment, an agent must instantiate such a domain with the objects of the environment and their properties. If the agent has an egocentric and partial view of the environment, it needs to act, sense, and abstract the perceived data in the planning domain. Furthermore, the agent needs to compile the plans computed by a symbolic planner into low level actions executable by its actuators. This paper proposes a framework that aims to accomplish the aforementioned perspective and allows an agent to perform different tasks. For this purpose, we integrate machine learning models to abstract the sensory data, symbolic planning for goal achievement and path planning for navigation. We evaluate the proposed method in accurate simulated environments, where the sensors are RGB-D on-board camera, GPS and compass.
翻译:为了有效地利用抽象(PDDL)规划领域来实现在未知环境中的目标,一个代理人必须将这样一个领域与环境对象及其特性同步。如果该代理人对环境有以自我为中心的局部观点,它就需要在规划领域采取行动、感知和抽取所感知的数据。此外,该代理人需要将一个象征性规划者计算出来的计划汇编成一个可以由其操作者执行的低水平行动。本文件提出了一个框架,目的是实现上述观点,并允许一个代理人执行不同的任务。为此,我们整合了机器学习模型,以抽取感官数据、实现目标的象征性规划和导航路径规划。我们评估了准确模拟环境中的拟议方法,那里的传感器是机载摄像机、全球定位系统和指南。