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[Author] Yutaka SATOH(2hit)

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  • Robust Tracking Using Particle Filter with a Hybrid Feature

    Xinyue ZHAO  Yutaka SATOH  Hidenori TAKAUJI  Shun'ichi KANEKO  

     
    PAPER-Image Recognition, Computer Vision

      Vol:
    E95-D No:2
      Page(s):
    646-657

    This paper presents a novel method for robust object tracking in video sequences using a hybrid feature-based observation model in a particle filtering framework. An ideal observation model should have both high ability to accurately distinguish objects from the background and high reliability to identify the detected objects. Traditional features are better at solving the former problem but weak in solving the latter one. To overcome that, we adopt a robust and dynamic feature called Grayscale Arranging Pairs (GAP), which has high discriminative ability even under conditions of severe illumination variation and dynamic background elements. Together with the GAP feature, we also adopt the color histogram feature in order to take advantage of traditional features in resolving the first problem. At the same time, an efficient and simple integration method is used to combine the GAP feature with color information. Comparative experiments demonstrate that object tracking with our integrated features performs well even when objects go across complex backgrounds.

  • 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.