4.6 Article

A deep learning based 2-dimensional hip pressure signals analysis method for sitting posture recognition

期刊

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.bspc.2021.103432

关键词

Sitting posture; Hip pressure; 2D pressure sensor array; Convolution neural network

资金

  1. national key research and development program [2019YFB1705702]
  2. Shanghai Technology and Science Funds [20531901000]
  3. Medical Engineering Fund of Fudan University [yg2021-019]

向作者/读者索取更多资源

Abnormal sitting postures can lead to various health issues for adolescents, making the research on intelligent monitoring technology for identifying irregular sitting postures significant. This paper proposes a method based on hip pressure analysis to accurately recognize sitting postures. By using a pressure sensor array and deep convolutional neural network, the method achieves high accuracy and proves its effectiveness over computer vision methods.
Abnormal sitting postures usually cause adolescents' myopia, scoliosis, and degenerative diseases. Therefore, research on intelligent monitoring technology that can quickly and accurately identify irregular sitting postures is of profound significance to the healthy development of adolescents. Existing methods mostly use computer vision to recognize sitting posture, but the model is not only complicated but also easily interfered with by problems such as occlusion and light. This paper proposes a method based on the analysis of the pressure on the hip interface to identify the sitting postures. An array pressure sensor placed on the cushion collects the tester's hip pressure and obtains a pressure heat map. This paper uses traditional feature extraction and shallow classifier methods and popular end-to-end deep convolutional neural network (CNN) methods to identify different types of sitting postures. The method in this paper is verified on the data of multiple testers of different body types. Experimental results show that the classification accuracy based on CNN reaches 99.82%, which proves the effectiveness of the method in sitting posture recognition. The study indicated hip pressure distribution is closely related to the sitting posture, and compared with computer vision, it is less disturbed and easier to recognize. The time efficiency of feature extraction using CNN is nearly 30% higher than traditional methods. Therefore, in the practical application of real scenes, with the increase of data volume, the time benefit brought by CNN can be more considerable and our system can be embedded in the cushion and do real-time detection.

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