使用计算机视觉测量工业任务的用力时间、负荷周期和手部活动水平

Measuring exertion time, duty cycle and hand activity level for industrial tasks using computer vision

Ergonomics · 2017
被引 14
ABS 3

中文导读

开发了两种计算机视觉算法,从工人执行工业任务的视频中自动估计用力时间、负荷周期和手部活动水平,结果与人工逐帧分析相当。

Abstract

Two computer vision algorithms were developed to automatically estimate exertion time, duty cycle (DC) and hand activity level (HAL) from videos of workers performing 50 industrial tasks. The average DC difference between manual frame-by-frame analysis and the computer vision DC was -5.8% for the Decision Tree (DT) algorithm, and 1.4% for the Feature Vector Training (FVT) algorithm. The average HAL difference was 0.5 for the DT algorithm and 0.3 for the FVT algorithm. A sensitivity analysis, conducted to examine the influence that deviations in DC have on HAL, found it remained unaffected when DC error was less than 5%. Thus, a DC error less than 10% will impact HAL less than 0.5 HAL, which is negligible. Automatic computer vision HAL estimates were therefore comparable to manual frame-by-frame estimates. Practitioner Summary: Computer vision was used to automatically estimate exertion time, duty cycle and hand activity level from videos of workers performing industrial tasks.

计算机视觉工业工程人机交互职业健康