工业协同机器人环境下的工业人体动作识别数据集

Mejdi Dallel, Vincent Havard, D. Baudry, X. Savatier
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引用次数: 21

摘要

如今,人类和机器人的合作越来越紧密。这提高了业务生产力和产品质量,从而提高了效率和增长。然而,人类和机器人的协作是相当静态的;机器人移动到一个特定的位置,然后人类在机器人的协助下执行任务。为了获得动态协作,机器人需要理解人类的意图并学会识别所执行的动作,从而补充他的能力并减轻他的艰巨任务。因此,机器学习算法需要一个人类动作识别数据集。目前可用的基于深度和基于RGB+D+S的人类行为识别数据集有许多局限性,包括缺乏训练样本以及不同的类标签、相机视图、主题的多样性,更重要的是缺乏工业环境中实际的工业人类行为。实际动作识别数据集包括简单的日常、相互或与健康相关的动作。因此,在本文中,我们引入了一个RGB+ S数据集,名为“工业人类动作识别数据集”(InHARD),该数据集来自现实世界的工业人类动作识别设置,超过200万帧,来自16个不同的主题。该数据集包含13个不同的工业行动类和超过4800个行动样本。该数据集的引入应该允许我们研究和开发各种学习技术,用于在涉及人机协作的工业环境中进行人类行为分析的任务。
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InHARD - Industrial Human Action Recognition Dataset in the Context of Industrial Collaborative Robotics
Nowadays, humans and robots are working more closely together. This increases business productivity and product quality, leading to efficiency and growth. However, human and robot collaboration is rather static; robots move to a specific position then humans perform their tasks while being assisted by the robots. In order to get a dynamic collaboration, robots need to understand the human’s intention and learn to recognize the performed actions complementing therefore his capabilities and relieving him of arduous tasks. Consequently, there is a need for a human action recognition dataset for Machine Learning algorithms. Currently available depth-based and RGB+D+S based human action recognition datasets have a number of limitations, counting the lack of training samples along with distinct class labels, camera views, diversity of subjects and more importantly the absence of actual industrial human actions in an industrial environment. Actual action recognition datasets include simple daily, mutual, or healthrelated actions. Therefore, in this paper we introduce an RGB+ S dataset named “Industrial Human Action Recognition Dataset” (InHARD) from a real-world setting for industrial human action recognition with over 2 million frames, collected from 16 distinct subjects. This dataset contains 13 different industrial action classes and over 4800 action samples. The introduction of this dataset should allow us the study and development of various learning techniques for the task of human actions analysis inside industrial environments involving human robot collaborations.
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