Title
Efficient non-uniform deblurring based on generalized additive convolution model.
Abstract
Image with non-uniform blurring caused by camera shake can be modeled as a linear combination of the homographically transformed versions of the latent sharp image during exposure. Although such a geometrically motivated model can well approximate camera motion poses, deblurring methods in this line usually suffer from the problems of heavy computational demanding or extensive memory cost. In this paper, we develop generalized additive convolution (GAC) model to address these issues. In GAC model, a camera motion trajectory can be decomposed into a set of camera poses, i.e., in-plane translations (slice) or roll rotations (fiber), which can both be formulated as convolution operation. Moreover, we suggest a greedy algorithm to decompose a camera motion trajectory into a more compact set of slices and fibers, and together with the efficient convolution computation via fast Fourier transform (FFT), the proposed GAC models concurrently overcome the difficulties of computational cost and memory burden, leading to efficient GAC-based deblurring methods. Besides, by incorporating group sparsity of the pose weight matrix into slice GAC, the non-uniform deblurring method naturally approaches toward the uniform blind deconvolution. Experimental results show that GAC-based deblurring methods can obtain satisfactory deblurring results compared to both state-of-the-art uniform and non-uniform deblurring methods and are much more efficient than non-uniform deblurring methods.
Year
DOI
Venue
2016
10.1186/s13634-016-0318-2
EURASIP J. Adv. Sig. Proc.
Keywords
Field
DocType
Camera shake, Image deblurring, Non-uniform deblurring, Blind deconvolution, Fast Fourier transform
Computer vision,Linear combination,Deblurring,Blind deconvolution,Computer science,Convolution,Greedy algorithm,Fast Fourier transform,Artificial intelligence,Trajectory,Computation
Journal
Volume
Issue
ISSN
2016
1
1687-6180
Citations 
PageRank 
References 
1
0.35
34
Authors
6
Name
Order
Citations
PageRank
Hong Deng1112.22
Dongwei Ren210312.26
david zhang344530.69
Wangmeng Zuo43833173.11
Hongzhi Zhang512219.79
Kuanquan Wang61617141.11