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[Author] Hirokatsu KATAOKA(2hit)

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  • Analyzing Fine Motion Considering Individual Habit for Appearance-Based Proficiency Evaluation

    Yudai MIYASHITA  Hirokatsu KATAOKA  Akio NAKAMURA  

     
    PAPER-Image Recognition, Computer Vision

      Pubricized:
    2016/10/18
      Vol:
    E100-D No:1
      Page(s):
    166-174

    We propose an appearance-based proficiency evaluation methodology based on fine-motion analysis. We consider the effects of individual habit in evaluating proficiency and analyze the fine motion of guitar-picking. We first extract multiple features on a large number of dense trajectories of fine motion. To facilitate analysis, we then generate a histogram of motion features using a bag-of-words model and change the number of visual words as appropriate. To remove the effects of individual habit, we extract the common principal histogram elements corresponding to experts or beginners according to discrimination's contribution rates using random forests. We finally calculate the similarity of the histograms to evaluate the proficiency of a guitar-picking motion. By optimizing the number of visual words for proficiency evaluation, we demonstrate that our method distinguishes experts from beginners with an accuracy of about 86%. Moreover, we verify experimentally that our proposed methodology can evaluate proficiency while removing the effects of individual habit.

  • Extended Feature Descriptor and Vehicle Motion Model with Tracking-by-Detection for Pedestrian Active Safety

    Hirokatsu KATAOKA  Kimimasa TAMURA  Kenji IWATA  Yutaka SATOH  Yasuhiro MATSUI  Yoshimitsu AOKI  

     
    PAPER-Image Recognition, Computer Vision

      Vol:
    E97-D No:2
      Page(s):
    296-304

    The percentage of pedestrian deaths in traffic accidents is on the rise in Japan. In recent years, there have been calls for measures to be introduced to protect vulnerable road users such as pedestrians and cyclists. In this study, a method to detect and track pedestrians using an in-vehicle camera is presented. We improve the technology of detecting pedestrians by using the highly accurate images obtained with a monocular camera. In the detection step, we employ ECoHOG as the feature descriptor; it accumulates the integrated gradient intensities. In the tracking step, we apply an effective motion model using optical flow and the proposed feature descriptor ECoHOG in a tracking-by-detection framework. These techniques were verified using images captured on real roads.