• DocumentCode
    3669682
  • Title

    Self-learning voxel-based multi-camera occlusion maps for 3D reconstruction

  • Author

    Maarten Slembrouck;Dimitri Van Cauwelaert;David Van Hamme;Dirk Van Haerenborgh;Peter Van Hese;Peter Veelaert;Wilfried Philips

  • Author_Institution
    Ghent University, TELIN dept. IPI/iMinds, Belgium
  • Volume
    2
  • fYear
    2014
  • Firstpage
    502
  • Lastpage
    509
  • Abstract
    The quality of a shape-from-silhouettes 3D reconstruction technique strongly depends on the completeness of the silhouettes from each of the cameras. Static occlusion, due to e.g. furniture, makes reconstruction difficult, as we assume no prior knowledge concerning shape and size of occluding objects in the scene. In this paper we present a self-learning algorithm that is able to build an occlusion map for each camera from a voxel perspective. This information is then used to determine which cameras need to be evaluated when reconstructing the 3D model at every voxel in the scene. We show promising results in a multi-camera setup with seven cameras where the object is significantly better reconstructed compared to the state of the art methods, despite the occluding object in the center of the room.
  • Keywords
    "Cameras","Visualization","Q-factor","Three-dimensional displays","Solid modeling","Image reconstruction","Classification algorithms"
  • Publisher
    ieee
  • Conference_Titel
    Computer Vision Theory and Applications (VISAPP), 2014 International Conference on
  • Type

    conf

  • Filename
    7294971