Blind Motion Deblurring With Pixel-Wise Kernel Estimation via Kernel Prediction Networks

被引:5
|
作者
Carbajal G. [1 ]
Vitoria P. [2 ]
Lezama J. [1 ]
Muse P. [1 ]
机构
[1] Universidad de la República, Department of Electrical Engineering, Montevideo
[2] Universitat Pompeu Fabra, Image Processing Group, Barcelona
关键词
deep learning; kernel prediction networks; motion deblurring; Non-uniform motion kernel estimation;
D O I
10.1109/TCI.2023.3322012
中图分类号
学科分类号
摘要
In recent years, the 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. For this reason, approaches that explicitly use a forward degradation model received significantly less attention. However, a well-defined specification of the blur genesis, as an intermediate step, promotes the generalization and explainability of the method. Towards this goal, we propose a learning-based motion deblurring method based on dense non-uniform motion blur estimation followed by a non-blind deconvolution approach. Specifically, given a blurry image, a first network estimates the dense per-pixel motion blur kernels using a lightweight representation composed of a set of image-adaptive basis motion kernels and the corresponding mixing coefficients. Then, a second network trained jointly with the first one, unrolls a non-blind deconvolution method using the motion kernel field estimated by the first network. The model-driven aspect is further promoted by training the networks on sharp/blurry pairs synthesized according to a convolution-based, non-uniform motion blur degradation model. Qualitative and quantitative evaluation shows that the kernel prediction network produces accurate motion blur estimates, and that the deblurring pipeline leads to restorations of real blurred images that are competitive or superior to those obtained with existing end-to-end deep learning-based methods. © 2015 IEEE.
引用
收藏
页码:928 / 943
页数:15
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