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[Author] Chun-Yu LIU(2hit)

1-2hit
  • Crowd Gathering Detection Based on the Foreground Stillness Model

    Chun-Yu LIU  Wei-Hao LIAO  Shanq-Jang RUAN  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2018/03/30
      Vol:
    E101-D No:7
      Page(s):
    1968-1971

    The abnormal crowd behavior detection is an important research topic in computer vision to improve the response time of critical events. In this letter, we introduce a novel method to detect and localize the crowd gathering in surveillance videos. The proposed foreground stillness model is based on the foreground object mask and the dense optical flow to measure the instantaneous crowd stillness level. Further, we obtain the long-term crowd stillness level by the leaky bucket model, and the crowd gathering behavior can be detected by the threshold analysis. Experimental results indicate that our proposed approach can detect and locate crowd gathering events, and it is capable of distinguishing between standing and walking crowd. The experiments in realistic scenes with 88.65% accuracy for detection of gathering frames show that our method is effective for crowd gathering behavior detection.

  • lcyanalysis: An R Package for Technical Analysis in Stock Markets

    Chun-Yu LIU  Shu-Nung YAO  Ying-Jen CHEN  

     
    PAPER-Office Information Systems, e-Business Modeling

      Pubricized:
    2019/03/26
      Vol:
    E102-D No:7
      Page(s):
    1332-1341

    With advances in information technology and the development of big data, manual operation is unlikely to be a smart choice for stock market investing. Instead, the computer-based investment model is expected to bring investors more accurate strategic analysis and more effective investment decisions than human beings. This paper aims to improve investor profits by mining for critical information in the stock data, therefore helping big data analysis. We used the R language to find the technical indicators in the stock market, and then applied the technical indicators to the prediction. The proposed R package includes several analysis toolkits, such as trend line indicators, W type reversal patterns, V type reversal patterns, and the bull or bear market. The simulation results suggest that the developed R package can accurately present the tendency of the price and enhance the return on investment.