Linear view synthesis using a dimensionality gap light field prior
Author(s)
Levin, Anat; Durand, Fredo
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Acquiring and representing the 4D space of rays in the world (the light field) is important for many computer vision and graphics applications. Yet, light field acquisition is costly due to their high dimensionality. Existing approaches either capture the 4D space explicitly, or involve an error-sensitive depth estimation process. This paper argues that the fundamental difference between different acquisition and rendering techniques is a difference between prior assumptions on the light field. We use the previously reported dimensionality gap in the 4D light field spectrum to propose a new light field prior. The new prior is a Gaussian assigning a non-zero variance mostly to a 3D subset of entries. Since there is only a low-dimensional subset of entries with non-zero variance, we can reduce the complexity of the acquisition process and render the 4D light field from 3D measurement sets. Moreover, the Gaussian nature of the prior leads to linear and depth invariant reconstruction algorithms. We use the new prior to render the 4D light field from a 3D focal stack sequence and to interpolate sparse directional samples and aliased spatial measurements. In all cases the algorithm reduces to a simple spatially invariant deconvolution which does not involve depth estimation.
Date issued
2010-08Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
IEEE Conference Computer Vision and Pattern Recognition 2010 (CVPR)
Publisher
Institute of Electrical and Electronics Engineers (IEEE)
Citation
Levin, Anat, and Fredo Durand. “Linear View Synthesis Using a Dimensionality Gap Light Field Prior.” IEEE Conference Computer Vision and Pattern Recognition 2010 (CVPR). 1831–1838. © Copyright 2010 IEEE
Version: Final published version
ISBN
978-1-4244-6984-0
ISSN
1063-6919