Work related musculoskeletal disorders (WMDs) have a significant impact on industrial productivity and society. With the advent of Industry 5.0, the safety and well-being of human operators are back to being crucial for each modern production system. In this context, many innovative technologies have been developed for ergonomic purposes. Motion Capture (MOCAP) technologies are applied to semi automatically calculate the ergonomic risk in a faster and less expensive way. In the other hand, the usage of MOCAP is not always recommended and data collection with common devices is preferred in industrial environment. For this scope, we compared the effectiveness of a commercial machine vision algorithm (ErgoEdge) based on RGB camera against a developed application based on the depth camera Microsoft Azure Kinect (AzKNIOSH) for NIOSH Lifting Equation computation. Fifty-two tasks in which volunteers performed manual handling of loads were evaluated with both systems, showing a good agreement.

Comparison Semiautomatic NIOSH Lifting Equation: AzKNIOSH versus RGB-based Machine Vision Algorithm / Forgione, C.; Coruzzolo, A. M.; Lolli, F.; Balugani, E.. - In: ...SUMMER SCHOOL FRANCESCO TURCO. PROCEEDINGS. - ISSN 2283-8996. - (2024). ( 29th Summer School Francesco Turco, 2024 ita 2024).

Comparison Semiautomatic NIOSH Lifting Equation: AzKNIOSH versus RGB-based Machine Vision Algorithm

Forgione C.;Coruzzolo A. M.;Lolli F.;Balugani E.
2024

Abstract

Work related musculoskeletal disorders (WMDs) have a significant impact on industrial productivity and society. With the advent of Industry 5.0, the safety and well-being of human operators are back to being crucial for each modern production system. In this context, many innovative technologies have been developed for ergonomic purposes. Motion Capture (MOCAP) technologies are applied to semi automatically calculate the ergonomic risk in a faster and less expensive way. In the other hand, the usage of MOCAP is not always recommended and data collection with common devices is preferred in industrial environment. For this scope, we compared the effectiveness of a commercial machine vision algorithm (ErgoEdge) based on RGB camera against a developed application based on the depth camera Microsoft Azure Kinect (AzKNIOSH) for NIOSH Lifting Equation computation. Fifty-two tasks in which volunteers performed manual handling of loads were evaluated with both systems, showing a good agreement.
2024
29th Summer School Francesco Turco, 2024
ita
2024
Forgione, C.; Coruzzolo, A. M.; Lolli, F.; Balugani, E.
Comparison Semiautomatic NIOSH Lifting Equation: AzKNIOSH versus RGB-based Machine Vision Algorithm / Forgione, C.; Coruzzolo, A. M.; Lolli, F.; Balugani, E.. - In: ...SUMMER SCHOOL FRANCESCO TURCO. PROCEEDINGS. - ISSN 2283-8996. - (2024). ( 29th Summer School Francesco Turco, 2024 ita 2024).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1389148
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