Single Image Non-uniform Blur Kernel Estimation via Adaptive Basis
Decomposition
- URL: http://arxiv.org/abs/2102.01026v1
- Date: Mon, 1 Feb 2021 18:02:31 GMT
- Title: Single Image Non-uniform Blur Kernel Estimation via Adaptive Basis
Decomposition
- Authors: Guillermo Carbajal, Patricia Vitoria, Mauricio Delbracio, Pablo
Mus\'e, Jos\'e Lezama
- Abstract summary: We propose a general, non-parametric model for dense non-uniform motion blur estimation.
We show that our method overcomes the limitations of existing non-uniform motion blur estimation.
- Score: 1.854931308524932
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Characterizing and removing motion blur caused by camera shake or object
motion remains an important task for image restoration. In recent years,
removal of motion blur in photographs has seen impressive progress in the hands
of deep learning-based methods, trained to map directly from blurry to sharp
images. Characterization of motion blur, on the other hand, has received less
attention and progress in model-based methods for restoration lags behind that
of data-driven end-to-end approaches. In this paper, we propose a general,
non-parametric model for dense non-uniform motion blur estimation. Given a
blurry image, we estimate a set of adaptive basis kernels as well as the mixing
coefficients at pixel level, producing a per-pixel map of motion blur. This
rich but efficient forward model of the degradation process allows the
utilization of existing tools for solving inverse problems. We show that our
method overcomes the limitations of existing non-uniform motion blur estimation
and that it contributes to bridging the gap between model-based and data-driven
approaches for deblurring real photographs.
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