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Proceedings ArticleDOI

Divide and Conquer for Full-Resolution Light Field Deblurring

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TLDR
A new blind motion deblurring strategy for LFs which alleviates limitations significantly and is CPU-efficient computationally and can effectively deblur full-resolution LFs.
Abstract
The increasing popularity of computational light field (LF) cameras has necessitated the need for tackling motion blur which is a ubiquitous phenomenon in hand-held photography. The state-of-the-art method for blind deblurring of LFs of general 3D scenes is limited to handling only downsampled LF, both in spatial and angular resolution. This is due to the computational overhead involved in processing data-hungry full-resolution 4D LF altogether. Moreover, the method warrants high-end GPUs for optimization and is ineffective for wide-angle settings and irregular camera motion. In this paper, we introduce a new blind motion deblurring strategy for LFs which alleviates these limitations significantly. Our model achieves this by isolating 4D LF motion blur across the 2D subaperture images, thus paving the way for independent deblurring of these subaperture images. Furthermore, our model accommodates common camera motion parameterization across the subaperture images. Consequently, blind deblurring of any single subaperture image elegantly paves the way for cost-effective non-blind deblurring of the other subaperture images. Our approach is CPU-efficient computationally and can effectively deblur full-resolution LFs.

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Citations
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Journal ArticleDOI

Fast and Full-Resolution Light Field Deblurring Using a Deep Neural Network

TL;DR: This work generates a complex blurry light field dataset and proposes a learning-based deblurring approach that is about 16K times faster than Srinivasan et.
Proceedings ArticleDOI

Unconstrained Motion Deblurring for Dual-Lens Cameras

TL;DR: A generalized blur model is proposed that elegantly explains the intrinsically coupled image formation model for dual-lens set-up, which are by far most predominant in smartphones and reveals an intriguing challenge that stems from an inherent ambiguity unique to this problem which naturally disrupts this coherence.
Journal ArticleDOI

6-DOF motion blur synthesis and performance evaluation of light field deblurring

TL;DR: The experiment results show that the proposed blur model can maintain the parallax information (depth-dependent blur) in a light field image and produce a synthetic blurry light field dataset based on the 6-DOF model.
Journal ArticleDOI

Learning a Degradation-Adaptive Network for Light Field Image Super-Resolution

TL;DR: Compared with existing state-of- the-art single and LF image SR methods, the proposed LF-DAnet method achieves superior SR performance under a wide range of degradations, and generalizes better to real LF images.
References
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Proceedings ArticleDOI

Unnatural L0 Sparse Representation for Natural Image Deblurring

TL;DR: This paper proposes a generalized and mathematically sound L0 sparse expression, together with a new effective method, for motion deblurring that does not require extra filtering during optimization and demonstrates fast energy decreasing, making a small number of iterations enough for convergence.
Proceedings ArticleDOI

Blind Image Deblurring Using Dark Channel Prior

TL;DR: This work introduces a linear approximation of the min operator to compute the dark channel and achieves state-of-the-art results on deblurring natural images and compares favorably methods that are well-engineered for specific scenarios.
Journal ArticleDOI

Non-uniform Deblurring for Shaken Images

TL;DR: A new parametrized geometric model of the blurring process in terms of the rotational motion of the camera during exposure is proposed, able to capture non-uniform blur in an image due to camera shake using a single global descriptor, and can be substituted into existing deblurring algorithms with only small modifications.
Proceedings ArticleDOI

Depth from Combining Defocus and Correspondence Using Light-Field Cameras

TL;DR: A novel simple and principled algorithm is presented that computes dense depth estimation by combining both defocus and correspondence depth cues, and shows how to combine the two cues into a high quality depth map, suitable for computer vision applications such as matting, full control of depth-of-field, and surface reconstruction.
Proceedings ArticleDOI

Decoding, Calibration and Rectification for Lenselet-Based Plenoptic Cameras

TL;DR: This work derives a novel physically based 4D intrinsic matrix relating each recorded pixel to its corresponding ray in 3D space as part of a decoding, calibration and rectification procedure for lenselet-based plenoptic cameras appropriate for a range of computer vision applications.
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