A Quantifiable Stratification Strategy for Tidy-up in Service Robotics

Zhi Yan, Nathan Crombez, J. Buisson, Y. Ruichek, T. Krajník, Li Sun
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引用次数: 3

Abstract

This paper addresses the problem of tidying up a living room in a messy condition with a service robot (i.e. domestic mobile manipulator). One of the key issues in completing such a task is how to continuously select the object to grasp and take it to the delivery area, especially when the robot works in constrained and partially observable environments. In this paper, we propose a quantifiable stratification method that allows the robot to find feasible action plans according to different configurations of objects-deposits, in order to smoothly deliver the objects to the target deposits. Specifically, it leverages a finite-state machine obeying the principle of Occam's razor (called O- FSM), which is designed to integrate arbitrary user-defined action plans typically ranging from simple to complex. Instead of considering a sophisticated model for the ever-changing objects-deposits configuration in the tidy-up task, we empower the robot to make simple yet effective decisions based on its current faced configuration under a generalized framework. Through scenario planning and simulation experiments with the explicitly designed test cases based on the real robot and the real competition scene, the effectiveness of our method is illustrated.
服务机器人中可量化的整理分层策略
本文研究了用服务机器人(即家用移动机械手)整理凌乱的客厅的问题。完成这一任务的关键问题之一是如何连续地选择物体来抓取并将其带到交付区域,特别是当机器人在受限和部分可观察的环境中工作时。在本文中,我们提出了一种可量化的分层方法,使机器人能够根据物体-沉积物的不同配置找到可行的行动计划,从而顺利地将物体运送到目标沉积物。具体来说,它利用了一个遵守奥卡姆剃刀原理(称为O- FSM)的有限状态机,该机器旨在集成任意用户定义的操作计划,通常范围从简单到复杂。在整理任务中,我们没有考虑复杂的模型来处理不断变化的物体-沉积物配置,而是赋予机器人在广义框架下基于其当前面对的配置做出简单而有效的决策的能力。通过基于真实机器人和真实比赛场景的场景规划和明确设计的测试用例仿真实验,验证了该方法的有效性。
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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