工作相关肌肉骨骼疾病
工作(物理)
肌肉骨骼疾病
晋升(国际象棋)
人工智能
物理医学与康复
计算机科学
模拟
人为因素与人体工程学
工程类
医学
毒物控制
环境卫生
政治
机械工程
法学
政治学
作者
Lakhwinder Pal Singh,Praveen Kumar,Shiv Kumar Lohan
摘要
Abstract In recent years, the promotion of farm mechanization has been directed toward reducing the human discomfort and fatigue associated with various agricultural work‐related activities. During these activities, many factors (like force, awkward posture, vibration, repetition, etc.) play a significant role in causing musculoskeletal disorders. Second, ergonomic risk assessment of physical work is conventionally conducted through observation and direct/indirect physiological measurements. However, these methods are time‐consuming and require human subjects to perform the motion to obtain detailed body movement data. In the present study, a semiautomatic rapid entire body assessment (REBA) evaluation tool is developed for real‐time assessment of agricultural work‐related musculoskeletal disorders risk of farm workers using Kinect V2 sensor‐based artificial intelligence approach. It allows the investigator speedy detect of awkward postures leading to critical conditions and to reduce subjective bias. It is useful to analyze online as well as offline posture analysis, it detects the critical areas of the body posture, which may lead to the musculoskeletal disorders of agricultural workers, and suggest aptly to correct the posture. The Kinect V2 REBA assessment score was found with a factual significant match with the reference expert evaluation as reflected by the Landis and Koch scale k = 0.673 ( p < 0.001), 95% confidence interval (CI) for the left side, and k = 0.644 ( p < 0.001), 95% CI for the right side of the body respectively.
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