Auto-AzKNIOSH: an automatic NIOSH evaluation with Azure Kinect coupled with task recognition.

IF 2 3区 工程技术 Q3 ENGINEERING, INDUSTRIAL Ergonomics Pub Date : 2024-12-04 DOI:10.1080/00140139.2024.2433027
Francesco Lolli, Antonio Maria Coruzzolo, Chiara Forgione, Mirco Peron, Fabio Sgarbossa
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Abstract

Standard Ergonomic Risk Assessment (ERA) from video analysis is a highly time-consuming activity and is affected by the subjectivity of ergonomists. Motion Capture (MOCAP) addresses these limitations by allowing objective ERA. Here a depth camera, one of the most commonly used MOCAP systems for ERA (i.e. Azure Kinect), is used for the evaluation of the NIOSH Lifting Equation exploiting a tool named AzKNIOSH. First, to validate the tool, we compared its performance with those provided by a commercial software, Siemens Jack TAT, based on an Inertial Measurement Units (IMUs) suit and found a high agreement between them. Secondly, a Convolutional Neural Network (CNN) was employed for task recognition, automatically identifying the lifting actions. This procedure was evaluated by comparing the results obtained from manual detection with those obtained through automatic detection. Thus, through automated task detection and the implementation of Auto-AzKNIOSH we achieved a fully automated ERA.Practitioner Summary:The standard evaluation of the NIOSH Lifting Equation is time-consuming and subjective, thus a new automatic tool is designed, which integrates motion captures provided by Azure Kinect and task recognition. We found a high agreement between our tool and Siemens Jack TAT suit, the golden standard technology for motion capture.

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Auto-AzKNIOSH:与Azure Kinect结合任务识别的自动NIOSH评估。
基于视频分析的标准人机工程学风险评估(ERA)是一项非常耗时且受人机工程学主观性影响的工作。动作捕捉(MOCAP)通过允许客观ERA解决了这些限制。在这里,深度相机是最常用的动作捕捉系统之一(即Azure Kinect),用于利用名为AzKNIOSH的工具评估NIOSH升降方程。首先,为了验证该工具,我们将其性能与基于惯性测量单元(imu)套装的商业软件西门子Jack TAT提供的性能进行了比较,发现它们之间的一致性很高。其次,采用卷积神经网络(CNN)进行任务识别,自动识别吊装动作;通过比较人工检测和自动检测的结果来评价这一程序。因此,通过自动任务检测和Auto-AzKNIOSH的实现,我们实现了完全自动化的ERA。从业者总结:NIOSH升降方程的标准评估耗时且主观,因此设计了一种新的自动工具,该工具集成了Azure Kinect提供的动作捕捉和任务识别。我们发现我们的工具与西门子Jack TAT套装高度一致,这是运动捕捉的黄金标准技术。
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来源期刊
Ergonomics
Ergonomics 工程技术-工程:工业
CiteScore
4.60
自引率
12.50%
发文量
147
审稿时长
6 months
期刊介绍: Ergonomics, also known as human factors, is the scientific discipline that seeks to understand and improve human interactions with products, equipment, environments and systems. Drawing upon human biology, psychology, engineering and design, Ergonomics aims to develop and apply knowledge and techniques to optimise system performance, whilst protecting the health, safety and well-being of individuals involved. The attention of ergonomics extends across work, leisure and other aspects of our daily lives. The journal Ergonomics is an international refereed publication, with a 60 year tradition of disseminating high quality research. Original submissions, both theoretical and applied, are invited from across the subject, including physical, cognitive, organisational and environmental ergonomics. Papers reporting the findings of research from cognate disciplines are also welcome, where these contribute to understanding equipment, tasks, jobs, systems and environments and the corresponding needs, abilities and limitations of people. All published research articles in this journal have undergone rigorous peer review, based on initial editor screening and anonymous refereeing by independent expert referees.
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