Abstract

As the intensity of work increases, many of us sit for long hours while working in the office. It is not easy to sit properly at work all the time and sitting for a long time with wrong postures may cause a series of health problems as time goes by. In addition, monitoring the sitting posture of patients with spinal disease would be beneficial for their recovery. Accordingly, this paper designs and implements a sitting posture recognition system from a flexible array pressure sensor, which is used to acquire pressure distribution map of sitting hips in a real-time manner. Moreover, an improved self-organizing map-based classification algorithm for six kinds of sitting posture recognition is proposed to identify whether the current sitting posture is appropriate. The extensive experimental results verify that the performance of ISOM-based sitting posture recognition algorithm (ISOM-SPR) in short outperforms that of four kinds of traditional algorithms including decision tree-based (DT), K-means-based (KM), back propagation neural network-based (BP), self-organizing map-based (SOM) sitting posture recognition algorithms. Finally, it is proven that the proposed system based on ISOM-SPR algorithm has good robustness and high accuracy.

Highlights

  • As everyone knows, sedentary behavior is becoming more common, while most white-collar workers spend a lot of time sitting down in front of computer and not moving

  • As an exploration and improvement, we study the method of sitting posture recognition based on the flexible array pressure sensor for real-time and accurate sitting posture recognition

  • The main contributions of this paper are: 1. This paper proposes one novel sitting posture recognition system based on a flexible array pressure sensor and overcomes the dependence on the environment of the sitting posture recognition method based on machine vision

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Summary

Introduction

Sedentary behavior is becoming more common, while most white-collar workers spend a lot of time sitting down in front of computer and not moving. The simple pressure distribution-based approach is to place sensors at some specific locations of a chair or backrest and use feature information collected by these sensors to recognize sitting postures [15]. This method may be uncomfortable and low accurate. As an exploration and improvement, we study the method of sitting posture recognition based on the flexible array pressure sensor for real-time and accurate sitting posture recognition. 2. This paper introduces the SOM algorithm for sitting posture recognition for the first time, and an improvement of SOM issued to optimize connected weights, it solves the problem of the low recognition rate of the traditional method based on simple pressure distribution.

System Model
SOM Based Sitting Posture Recognition Algorithm
Dimensionality Reduction for Original Data
Data Sets
Confusion Metrics
Experimental Result
Conclusions
Full Text
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