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Smart Control System Using Fuzzy and Neural Network Prediction System

  • Kim, Tae Yeun (SW Convergence Education Institute, Chosun University) ;
  • Bae, Sang Hyun (Department of Computer Science & Statistics, Chosun University)
  • Received : 2019.11.29
  • Accepted : 2019.12.17
  • Published : 2019.12.30

Abstract

In this paper, a prediction system is proposed to control the brightness of smart street lamps by predicting the moving path through the reduction of consumption power and information of pedestrian's past moving direction while meeting the function of existing smart street lamps. The brightness of smart street lamps is adjusted by utilizing the walk tracking vector and soft hand-off characteristics obtained through the motion sensing sensor of smart street lamps. In addition, the motion vector is used to analyze and predict the pedestrian path, and the GPU is used for high-speed computation. Pedestrians were detected using adaptive Gaussian mixing, weighted difference imaging, and motion vectors, and motions of pedestrians were analyzed using the extracted motion vectors. The preprocessing process using linear interpolation is performed to improve the performance of the proposed prediction system. Fuzzy prediction system and neural network prediction system are designed in parallel to improve efficiency and rough set is used for error correction.

Keywords

References

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