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Multiple Camera-Based Correspondence of Ground Foot for Human Motion Tracking

사람의 움직임 추적을 위한 다중 카메라 기반의 지면 위 발의 대응

  • 서동욱 (울산대학교 전기전자정보시스템공학과) ;
  • 채현욱 (울산대학교 전기전자정보시스템공학과) ;
  • 조강현 (울산대학교 전기전자정보시스템공학과)
  • Published : 2008.08.01

Abstract

In this paper, we describe correspondence among multiple images taken by multiple cameras. The correspondence among multiple views is an interesting problem which often appears in the application like visual surveillance or gesture recognition system. We use the principal axis and the ground plane homography to estimate foot of human. The principal axis belongs to the subtracted silhouette-based region of human using subtraction of the predetermined multiple background models with current image which includes moving person. For the calculation of the ground plane homography, we use landmarks on the ground plane in 3D space. Thus the ground plane homography means the relation of two common points in different views. In the normal human being, the foot of human has an exactly same position in the 3D space and we represent it to the intersection in this paper. The intersection occurs when the principal axis in an image crosses to the transformed ground plane from other image. However the positions of the intersection are different depend on camera views. Therefore we construct the correspondence that means the relationship between the intersection in current image and the transformed intersection from other image by homography. Those correspondences should confirm within a short distance measuring in the top viewed plane. Thus, we track a person by these corresponding points on the ground plane. Experimental result shows the accuracy of the proposed algorithm has almost 90% of detecting person for tracking based on correspondence of intersections.

Keywords

References

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  1. Collaborative Tracking Algorithm for Intelligent Video Surveillance Systems Using Multiple Network Cameras vol.21, pp.6, 2011, https://doi.org/10.5391/JKIIS.2011.21.6.743