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Learning the state of the world : object-based world modeling for mobile-manipulation robots
[摘要] Mobile-manipulation robots performing service tasks in human-centric indoor environments have long been a dream for developers of autonomous agents. Tasks such as cooking and cleaning typically involve interaction with the environment, hence robots need to know relevant aspects of their spatial surroundings. However, service robots typically have little prior information about their environment, unlike industrial robots in structured environments. Even if this information was given initially, due to the involvement of other agents (e.g., humans adding/moving/removing objects), uncertainty in the complete state of the world is inevitable over time. Additionally, most information about the world is irrelevant to any particular task at hand. Mobile-manipulation robots therefore need to continuously perform the task of state estimation, using perceptual information to maintain a representation of the state, and its uncertainty, of task-relevant aspects of the world. Because indoor tasks frequently require interacting with objects, objects should be given critical emphasis in spatial representations for service robots. Compared to occupancy grids and feature-based maps that have been used traditionally in navigation and mapping, object-based representations are still in their infancy. By definition, mobile-manipulation robots are capable of moving in and interacting with the world. Hence, at the very least, such robots need to know about the physical occupancy of space and potential targets of interaction (i.e., objects). In this thesis, I propose a representation based on objects, their ;;semantic;; attributes (task-relevant properties such as type and pose), and their geometric realizations in the physical world.
[发布日期]  [发布机构] Massachusetts Institute of Technology
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