Multi-modal fusion in ergonomic health: bridging visual and pressure for sitting posture detection

As the contradiction between the pursuit of health and the increasing duration of sedentary office work intensifies, there has been a growing focus on maintaining correct sitting posture while working in recent years. Scientific studies have shown that sitting posture correction plays a positive rol...

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Veröffentlicht in:CCF transactions on pervasive computing and interaction (Online) 2024-12, Vol.6 (4), p.380-393
Hauptverfasser: Quan, Qinxiao, Gao, Yang, Bai, Yang, Jin, Zhanpeng
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Sprache:eng
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Zusammenfassung:As the contradiction between the pursuit of health and the increasing duration of sedentary office work intensifies, there has been a growing focus on maintaining correct sitting posture while working in recent years. Scientific studies have shown that sitting posture correction plays a positive role in alleviating physical pain. With the rapid development of artificial intelligence technology, a significant amount of research has shifted towards implementing sitting posture detection and recognition systems using machine learning approaches. In this paper, we introduce an innovative sitting posture recognition system that integrates visual and pressure modalities. The system employs a differentiated pre-training strategy for training the bimodal models and features a feature fusion module designed based on feed-forward networks. Our system utilizes commonly available built-in cameras in laptops for collecting visual data and thin-film pressure sensor mats for pressure data in office scenarios. It achieved an F1-Macro score of 95.43% on a dataset with complex composite actions, marking an improvement of 7.13% and 10.79% over systems that rely solely on pressure or visual modalities, respectively, and a 7.07% improvement over systems using a uniform pre-training strategy.
ISSN:2524-521X
2524-5228
DOI:10.1007/s42486-024-00164-x