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[Author] Shinjiro KAWATO(2hit)

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  • Scale-Adaptive Face Detection and Tracking in Real Time with SSR Filters and Support Vector Machine

    Shinjiro KAWATO  Nobuji TETSUTANI  Kenichi HOSAKA  

     
    PAPER-Image Recognition, Computer Vision

      Vol:
    E88-D No:12
      Page(s):
    2857-2863

    In this paper, we propose a method for detecting and tracking faces in video sequences in real time. It can be applied to a wide range of face scales. Our basic strategy for detection is fast extraction of face candidates with a Six-Segmented Rectangular (SSR) filter and face verification by a support vector machine. A motion cue is used in a simple way to avoid picking up false candidates in the background. In face tracking, the patterns of between-the-eyes are tracked while updating the matching template. To cope with various scales of faces, we use a series of approximately 1/ scale-down images, and an appropriate scale is selected according to the distance between the eyes. We tested our algorithm on 7146 video frames of a news broadcast featuring sign language at 320240 frame size, in which one or two persons appeared. Although gesturing hands often hid faces and interrupted tracking, 89% of faces were correctly tracked. We implemented the system on a PC with a Xeon 2.2-GHz CPU, running at 15 frames/second without any special hardware.

  • Structure Recovery from Multiple Images by Directly Estimating the Intersections in 3-D Space

    Shinjiro KAWATO  

     
    PAPER

      Vol:
    E77-D No:9
      Page(s):
    966-972

    This paper presents a new approach to the recovery of 3-D structure from multiple pairs of images from different viewpoints. Searching for the corresponding points between images, which is common in stereopsis, is avoided. Extracted edges from input images are projected back into 3-D space, and their intersections are calculated directly. Many false intersections may appear, but if we have many pair images, true intersections are extracted by appropriate thresholding. Octree representation of the intersections enables this approach. We consider a way to treat adjacent edge piexels as a line segment rather than as individual points, which differs from previous works and leads to a new algorithm. Experimental results using both synthetic and actual images are also described.