Towards video-based injury risk assessment: predicting lifting loads from body pose trajectories
Zihao Zhu, Fangzhou Mu, Robert Radwin, Yin Li

TL;DR
This paper introduces a video-based method to assess injury risk by predicting lifting loads from body movements.
Contribution
The novel contribution is a vision-based system using body pose trajectories to predict lifting loads without sensors.
Findings
The method achieved 74.8% accuracy in distinguishing light vs. heavy lifting loads.
It reached 50.8% accuracy in identifying three load levels across lifting and lowering tasks.
Abstract
Manual material handling tasks, such as lifting and lowering, are ubiquitous across industry sectors. Overexertion during these tasks is among the leading causes of workplace injuries. Previous studies have shown that lifting load is a key factor in determining the risk of injury. However, existing methods for measuring the lifting load often rely on manual measurements, sensor fusion, or other techniques that are difficult to scale in practice. In this study, we present a vision-based approach to automatically predict lifting load by analyzing human body pose trajectories extracted from video alone. Specifically, our method employs person detection, visual tracking, and human body pose estimation to extract pose trajectories and their kinematic features, which are then used to train a Transformer model for load prediction. To evaluate our method, we conducted a human subjects study of…
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Taxonomy
TopicsTraffic and Road Safety · Occupational Health and Safety Research · Human-Automation Interaction and Safety
