A User-Adaptive Gesture Recognition System Applied to Human-Robot Collaboration in Factories

Eva Coupeté, F. Moutarde, S. Manitsaris
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引用次数: 14

Abstract

Enabling Human-Robot collaboration (HRC) requires robot with the capacity to understand its environment and actions performed by persons interacting with it. In this paper we are dealing with industrial collaborative robots on assembly line in automotive factories. These robots have to work with operators on common tasks. We are working on technical gestures recognition to allow robot to understand which task is being executed by the operator, in order to synchronize its actions. We are using a depth-camera with a top view and we track hands positions of the worker. We use discrete HMMs to learn and recognize technical gestures. We are also interested in a system of gestures recognition which can adapt itself to the operator. Indeed, a same technical gesture seems very similar from an operator to another, but each operator has his/her own way to perform it. In this paper, we study an adaptation of the recognition system by modifying the learning database with a addition very small amount of gestures. Our research shows that by adding 2 sets of gestures to be recognized from the operator who is working with the robot, which represents less than 1% of the database, we can improve correct recognitions rate by ~3.5%. When we add 10 sets of gestures, 2.6% of the database, the improvement reaches 5.7%.
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一种用于工厂人机协作的用户自适应手势识别系统
实现人机协作(HRC)要求机器人具有理解其环境和与之交互的人所执行的动作的能力。本文主要研究汽车工厂装配线上的工业协作机器人。这些机器人必须与操作员一起完成普通任务。我们正在研究手势识别技术,使机器人能够理解操作员正在执行的任务,从而同步其动作。我们使用了一个具有俯视图的深度摄像机,我们跟踪工人的手的位置。我们使用离散的hmm来学习和识别技术手势。我们对手势识别系统也很感兴趣,它可以根据操作者的动作进行自我调整。的确,同样的技术手势从操作员到另一个操作员似乎非常相似,但每个操作员都有自己的方式来执行它。在本文中,我们通过添加非常少量的手势来修改学习数据库来研究识别系统的自适应。我们的研究表明,通过增加2组手势来识别与机器人一起工作的操作员,这两组手势占数据库的比例不到1%,我们可以将正确识别率提高约3.5%。当我们增加10组手势,占数据库的2.6%时,改进达到5.7%。
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