Optimal Representation of Multiple View Video
Author(s) -
Marco Volino,
Dan Casas,
John Collomosse,
Adrian Hilton
Publication year - 2014
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.28.8
Subject(s) - resampling , computer vision , artificial intelligence , computer science , rendering (computer graphics) , ghosting , view synthesis , representation (politics) , optical flow , computer graphics (images) , image (mathematics) , politics , political science , law
Multi-view video acquisition is widely used for reconstruction and free-viewpoint rendering of dynamic scenes by directly resampling from the captured images. This paper addresses the problem of optimally resampling and representing multi-view video to obtain a compact representation without loss of the view-dependent dynamic surface appearance. Spatio-temporal optimisation of the multi-view resampling is introduced to extract a coherent multi-layer texture map video. This resampling is combined with a surface-based optical flow alignment between views to correct for errors in geometric reconstruction and camera calibration which result in blurring and ghosting artefacts. The multi-view alignment and optimised resampling results in a compact representation with minimal loss of information allowing high-quality free-viewpoint rendering. Evaluation is performed on multi-view datasets for dynamic sequences of cloth, faces and people. The representation achieves >90% compression without significant loss of visual quality.
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