A Framework for Recognizing Industrial Actions via Joint Angles

Ashutosh Kumar Singh, Mohamed Adjel, Vincent Bonnet, R. Passama, A. Cherubini
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引用次数: 1

Abstract

This paper proposes a novel framework for recognizing industrial actions, in the perspective of human-robot collaboration. Given a one second long measure of the human's motion, the framework can determine his/her action. The originality lies in the use of joint angles, instead of Cartesian coordinates. This design choice makes the framework sensor agnostic and invariant to affine transformations and to anthropometric differences. On AnDy dataset, we outperform the state of art classifier. Furthermore, we show that our framework is effective with limited training data, that it is subject independent, and that it is compatible with robotic real-time constraints. In terms of methodology, the framework is an original synergy of two antithetical schools of thought: model-based and data-based algorithms. Indeed, it is the cascade of an inverse kinematics estimator compliant with the International Society of Biomechanics recommendations, followed by a deep learning architecture based on Bidirectional Long Short Term Memory. We believe our work may pave the way to successful and fast action recognition with standard depth cameras, embedded on moving collaborative robots.
通过联合角度识别工业行动的框架
本文从人机协作的角度提出了一种新的工业行为识别框架。只要对人类的运动进行一秒钟的测量,这个框架就可以确定他/她的行动。其独创性在于使用关节角,而不是笛卡尔坐标。这种设计选择使得框架传感器对仿射变换和人体测量差异具有不可知性和不变性。在AnDy数据集上,我们优于目前最先进的分类器。此外,我们证明了我们的框架在有限的训练数据下是有效的,它是独立于主体的,并且与机器人的实时约束兼容。就方法论而言,该框架是两种对立思想流派的原始协同:基于模型的算法和基于数据的算法。实际上,它是一个符合国际生物力学协会建议的逆运动学估计器的级联,然后是基于双向长短期记忆的深度学习架构。我们相信,我们的工作可能会为嵌入在移动协作机器人上的标准深度摄像头的成功和快速动作识别铺平道路。
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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