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Automated Video Exposure Assessment of Repetitive Hand Activity Level for a Load Transfer Task

机译:自动视频曝光评估重复手动活动水平的负荷转移任务

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Objective: A new method is described for automatically quantifying repetitive hand activity with the use of digital video processing. Background: The hand activity level (HAL) is widely used for evaluating repetitive hand work. Conventional methods involving either a trained observer on- or off-site or manual off-site video analysis are often considered inaccurate, cumbersome, or impractical for routine work assessment. Method: A cross-correlation-based template-matching algorithm was programmed to track the motion trajectory of a selected region of interest across successive video frames for a single camera to measure repetition frequency, duty cycle, and HAL. A simple, paced, load transfer task was used to simulate a repetitive industrial activity. A total of 12 participants were videoed performing the task for varying HAL conditions. The automatically predicted HAL was compared with the manually measured HAL with the use of frame-by-frame video analysis. Results: Predicted frequency, duty cycle, and HAL were in concert with the manually measured HAL conditions.The linear regression slopes of the automatically predicted values with respect to the manually measured values were 0.98 (R~2 = .79), 1.27 (R~2 = .63), and 1.06 (R~2 = .77) for frequency, duty cycle, and HAL, respectively. Conclusion: A proof-of-concept for automatic video-based direct exposure assessment was demonstrated. Application: The video assessment method for repetitive motion is promising for automatic, unobtrusive, and objective exposure assessment, which may offer broad availability with the use of a camera-enabled mobile device for helping evaluate, prevent, and control exposure to repetitive motions related to upper-extremity injuries in the workplace.
机译:目的:描述一种使用数字视频处理自动量化重复性手部活动的新方法。背景:手工活动水平(HAL)被广泛用于评估重复的手工作业。涉及训练有素的现场或非现场观察者或手动非现场视频分析的常规方法通常被认为是不准确,繁琐或不切实际的常规工作评估。方法:对基于互相关的模板匹配算法进行编程,以跟踪单个摄像机在连续视频帧上所选感兴趣区域的运动轨迹,以测量重复频率,占空比和HAL。一个简单的,有节奏的负荷转移任务用于模拟重复的工业活动。总共对12名参与者进行了录像,以执行各种HAL条件下的任务。通过逐帧视频分析,将自动预测的HAL与手动测量的HAL进行了比较。结果:预测频率,占空比和HAL与手动测量的HAL条件一致,自动预测值相对于手动测量值的线性回归斜率分别为0.98(R〜2 = .79),1.27(R频率,占空比和HAL分别为〜2 = 0.63和1.06(R〜2 = 0.77)。结论:展示了基于视频的自动直接暴露评估的概念证明。应用:用于重复运动的视频评估方法有望用于自动,不干扰和客观的曝光评估,通过使用带摄像头的移动设备来帮助评估,防止和控制与运动有关的重复运动的曝光,可以提供广泛的可用性。工作场所上肢受伤。

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