Abstract

Physical health diseases caused by wrong sitting postures are becoming increasingly serious and widespread, especially for sedentary students and workers. Existing video-based approaches and sensor-based approaches can achieve high accuracy, while they have limitations like breaching privacy and relying on specific sensor devices. In this work, we propose Sitsen, a non-contact wireless-based sitting posture recognition system, just using radio frequency signals alone, which neither compromises the privacy nor requires using various specific sensors. We demonstrate that Sitsen can successfully recognize five habitual sitting postures with just one lightweight and low-cost radio frequency identification tag. The intuition is that different postures induce different phase variations. Due to the received phase readings are corrupted by the environmental noise and hardware imperfection, we employ series of signal processing schemes to obtain clean phase readings. Using the sliding window approach to extract effective features of the measured phase sequences and employing an appropriate machine learning algorithm, Sitsen can achieve robust and high performance. Extensive experiments are conducted in an office with 10 volunteers. The result shows that our system can recognize different sitting postures with an average accuracy of 97.02%.

Highlights

  • A large number of office workers and students are faced with a sedentary phenomenon

  • We introduce Sitsen, which is the first noncontact sitting posture recognition system based on commercial radio frequency identification (RFID)

  • We obtain clean phase sequence after data processing, select feature whose contribute rate more than 95% by principal component analysis (PCA), and back propagation (BP) net classifier is used in sitting posture recognition

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Summary

Introduction

Research shows that most people in the United States spend 54.9% of their waking time in sedentary behaviours.[1] Among them, office workers spend 65% of their workdays sitting, which[2] shows that a person spends 6–8 h a day on sedentary. Sedentary behaviours[3,4] and bad sitting postures are closely related to modern health musculoskeletal disorders[5] such as cervical spondylosis, chronic back pain, joint and muscle pain, improper spine alignment and spine disc damage.[6,7,8,9,10] There is a lot of prospective evidence that static. The simple idea is extracting features to distinguish different sitting postures, but the obvious challenge is how to find the effective features. In order to overcome this challenge, we use the phase difference to measure user’s breath[26] to get sitting posture information. The deployment of our system is more flexible, which means it will be capable of being less interfered

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