联系任务执行过程中协作和冲突事件的检测

Felix Franzel, Thomas Eiband, Dongheui Lee
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引用次数: 3

摘要

该工作引入了接触事件管道,以区分任务接触与任务执行过程中的人机交互和碰撞。私营、卫生和工业部门对近距离人机物理交互(pHRI)的需求日益增加,需要新的安全解决方案。安全协作中最重要的问题之一是人与机器人之间接触的鲁棒识别和分类。设计了一种解决方案,可以在任务执行过程中实现简单的任务教学和准确的接触监测。除了外力和扭矩传感器外,只有本体感觉数据用于接触评估。设计了一种基于演示任务知识和人类交互产生的偏移量的方法,通过接触事件检测器将接触事件与正常执行区分开来。使用识别出的事件训练一个基于支持向量机的接触类型分类器。该系统的设置是为了快速识别接触事件并使机器人做出适当的反应。通过记录有意和无意接触的数据以及任务接触(如对象操作和环境交互)的示例,进行离线评估。系统的性能和高响应性在不同的实验中进行了评估,包括一个真实世界的任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Collaboration and Collision Events during Contact Task Execution
This work introduces a contact event pipeline to distinguish task-contact from Human-Robot interaction and collision during task execution. The increasing need for close proximity physical human-robot interaction (pHRI) in the private, health and industrial sector demands for new safety solutions. One of the most important issues regarding safe collaboration is the robust recognition and classification of contacts between human and robot. A solution is designed, that enables simple task teaching and accurate contact monitoring during task execution. Besides an external force and torque sensor, only proprioceptive data is used for the contact evaluation. An approach based on demonstrated task knowledge and the offset resulting from human interaction is designed to distinguish contact events from normal execution by a contact event detector. A contact type classifier implemented as Support Vector Machine is trained with the identified events. The system is set up to quickly identify contact incidents and enable appropriate robot reactions. An offline evaluation is conducted with data recorded from intended and unintended contacts as well as examples of task-contacts like object manipulation and environmental interactions. The system’s performance and its high responsiveness are evaluated in different experiments including a real world task.
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