Fall Down Detection Under Smart Home System.

Journal: Journal of medical systems
Published Date:

Abstract

Medical technology makes an inevitable trend for the elderly population, therefore the intelligent home care is an important direction for science and technology development, in particular, elderly in-home safety management issues become more and more important. In this research, a low of operation algorithm and using the triangular pattern rule are proposed, then can quickly detect fall-down movements of humanoid by the installation of a robot with camera vision at home that will be able to judge the fall-down movements of in-home elderly people in real time. In this paper, it will present a preliminary design and experimental results of fall-down movements from body posture that utilizes image pre-processing and three triangular-mass-central points to extract the characteristics. The result shows that the proposed method would adopt some characteristic value and the accuracy can reach up to 90 % for a single character posture. Furthermore the accuracy can be up to 100 % when a continuous-time sampling criterion and support vector machine (SVM) classifier are used.

Authors

  • Li-Hong Juang
    Department of Civil Engineering, and The Key Lab of Digital Signal and Image Processing of Guangdong Province, Shantou University, Guangdong, People's Republic of China, puuan.juang@msa.hinet.net.
  • Ming-Ni Wu