Two-Phase Kernel Estimation for Robust Motion Deblurring

(EFFICIENT ESTIMATOR For SIGNIFICANT BLUR REMOVAL)

Li Xu              Jiaya Jia

Real Image Input Deblurring Result (Kernel Size: 95x95)

Abstract

We propose an efficient and high-quality kernel estimation method based on using the spatial prior and the iterative support detection (ISD) kernel refinement to restore pictures from significant motion blur.

Our method can estimate very large blur kernels (i.e., PSFs) and remove significant blur quickly without much hand-tuning.

 


Downloads

Robust Deblurring Software (Windows Trial Version)

Non-blind Deconvolution Executable (Windows Command-line)

More Examples and Comparison

  Technical Paper

  


Our Deblurring Work

L0 Sparsity Motion Deblurring

Depth-Aware Motion Deblurring

Large-Kernel Robust Motion Deblurring

High-Quality Iterative Optimization

  Rotational Motion Deblurring

  Transparency-based Deblurring

 


 

Our Captured Real Images

Real Image Inputs

Our Results

Kernels

85x85

55x95

51x51

31x31

 

 

Spatial Varient Blur
(All input real images below are blurred non-uniformly, presented in other manuscripts)
We estimate one PSF for each image. This inevitably produces errors. The results are
however reasonable, indicating that reliable PSF estimation is important.

Input

 

Kernels
 

Our Result
 
Input
   
Our Result
 
Input
   
Our Result
 
Input
   
Our Result
 
Input
   
Our Result
 
Input
   
Our Result