安全升降:一种使用微软Kinect的工厂工人自适应培训系统

J. Delpresto, Chuhong Duan, L. M. Layiktez, E. G. Moju-Igbene, M. B. Wood, P. A. Beling
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引用次数: 10

摘要

在工业工厂工作的美国人面临的最大挑战之一是患肌肉骨骼疾病(MSDs)的风险。每年约有2%的美国工人患有MSDs。这对工人的生活产生了重大的社会后果,并给雇主带来了巨大的负担,因为MSDs占所有工人赔偿成本的三分之一以上。为减少与工作相关的msd而开发的静态框架模型要么需要专业知识,要么缺乏实时分析。这个项目的重点是设计一个精确的监测系统,通过提出适应性的技术建议来帮助工厂工人纠正他们的举重技术。为了观察人体升降,我们使用了微软Kinect深度感应相机,它能够以每秒30帧的速度提供实时骨骼跟踪。使用几种起重方程和各种生物力学模型定义了适当的起重技术。了解使用者的关节角度可以让我们评估升降机的安全性。在我们的系统设计中,首先要求用户以不同的规范风格执行几个提升。然后,系统为用户提供推荐的升降方式,在用户测量能力的限制下最大限度地提高安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Safe lifting: An adaptive training system for factory workers using the Microsoft Kinect
One of the biggest challenges facing Americans working in industrial factories is the risk of developing musculoskeletal disorders (MSDs). About 2% of all American workers suffer from MSDs every year. This has a significant social consequence on the lives of workers and places a large burden on the employers, as MSDs account for over one-third of all worker compensation costs. Still-frame models developed to reduce work-related MSDs either require expertise or lack real-time analysis. The focus of this project was to design an accurate monitoring system that could help factory workers correct their heavy-lifting technique by making adaptive technique recommendations. To observe human lifts, we made use of the Microsoft Kinect depth sensing camera, which has the ability to provide real-time skeletal tracking at 30 frames per second. Proper lifting techniques were defined using several lifting equations and various biomechanical models. Knowledge of the user's joint angles allows us to assess lift safety. In our system design, users are first asked to perform several lifts in different canonical styles. The system then provides the user with a recommended lifting style that maximizes safety within the constraints of the user's measured capabilities.
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