Posture Prediction for Healthy Sitting using a Smart Chair
Tariku Adane Gelaw, Misgina Tsighe Hagos

TL;DR
This paper develops machine learning models to accurately classify six sitting postures using pressure sensor data from a smart chair, aiming to promote healthier sitting habits and prevent musculoskeletal issues.
Contribution
It introduces a novel approach using pressure sensors in a smart chair combined with multiple machine learning algorithms for sitting posture classification.
Findings
Achieved 98% accuracy on controlled dataset.
Achieved 97% accuracy on realistic dataset.
Demonstrated effectiveness of pressure sensors for posture recognition.
Abstract
Poor sitting habits have been identified as a risk factor to musculoskeletal disorders and lower back pain especially on the elderly, disabled people, and office workers. In the current computerized world, even while involved in leisure or work activity, people tend to spend most of their days sitting at computer desks. This can result in spinal pain and related problems. Therefore, a means to remind people about their sitting habits and provide recommendations to counterbalance, such as physical exercise, is important. Posture recognition for seated postures have not received enough attention as most works focus on standing postures. Wearable sensors, pressure or force sensors, videos and images were used for posture recognition in the literature. The aim of this study is to build Machine Learning models for classifying sitting posture of a person by analyzing data collected from a…
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Taxonomy
MethodsLogistic Regression
