Artificial Intelligence designed for analysing human activity in a work environment
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University of Tlemcen
Abstract
The rise of work-related musculoskeletal disorders (WMSDs) has become a
major concern in various industries, leading to serious health problems and
economic losses. Despite the automation of some manufacturing processes,
manual tasks are still necessary and can pose ergonomic risks to workers.
To address this issue, an AI-powered tool for ergonomic risk assessment has
been developed. The tool successfully estimates the 3D human pose with a
mean per joint position error (MPJPE) of 46.8 mm, using the Human3.6M
dataset, and calculates the Rapid Entire Body Assessment (REBA) score in
real time, providing a comprehensive assessment of ergonomic risk factors.
Our approach has been validated by a specialist doctor in rehabilitation. The
system employs a semi-supervised learning approach with a fully convolutional
model based on dilated temporal convolution over 2D keypoints. The
developed AI-powered tool provides immediate feedback, enabling enhanced
actions for risk reduction. Case studies demonstrate the effectiveness of the
approach for improving the accuracy and efficiency of ergonomic risk assessment
in various industries.