Efficient minimal-surface regularization of perspective depth maps in variational stereo

2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2015)

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摘要
We propose a method for dense three-dimensional surface reconstruction that leverages the strengths of shape-based approaches, by imposing regularization that respects the geometry of the surface, and the strength of depth-map-based stereo, by avoiding costly computation of surface topology. The result is a near real-time variational reconstruction algorithm free of the staircasing artifacts that affect depth-map and plane-sweeping approaches. This is made possible by exploiting the gauge ambiguity to design a novel representation of the regularizer that is linear in the parameters and hence amenable to be optimized with state-of-the-art primal-dual numerical schemes.
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关键词
minimal-surface regularization,perspective depth maps,variational stereo,dense three-dimensional surface reconstruction,shape-based approaches,surface geometry,depth-map-based stereo,surface topology,real-time variational reconstruction algorithm,plane-sweeping approaches
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