A TV Prior for High-Quality Local Multi-view Stereo Reconstruction

3DV), 2014 2nd International Conference  (2014)

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摘要
Local fusion of disparity maps allows fast parallel 3D modeling of large scenes that do not fit into main memory. While existing methods assume a constant disparity uncertainty, disparity errors typically vary spatially from tenths of pixels to several pixels. In this paper we propose a method that employs a set of Gaussians for different disparity classes, instead of a single error model with only one variance. The set of Gaussians is learned from the difference between generated disparity maps and ground-truth disparities. Pixels are assigned particular disparity classes based on a Total Variation (TV) feature measuring the local oscillation behavior of the 2D disparity map. This feature captures uncertainty caused for instance by lack of texture or fron to-parallel bias of the stereo method. Experimental results on several datasets in varying configurations demonstrate that our method yields improved performance both qualitatively and quantitatively.
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关键词
Gaussian processes,image fusion,image reconstruction,stereo image processing,2D disparity map,Gaussian set,TV prior,constant disparity uncertainty,disparity errors,disparity map local fusion,fast parallel 3D modeling,ground-truth disparity,high-quality local multiview stereo reconstruction,local oscillation behavior,single error model,total variation feature,3D Reconstruction,Multi-View Stereo
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