Detecting and classifying blurred image regions

Many image deblurring algorithms perform blur kernel estimation and image deblurring by assuming the blur type and distribution are already known. However, in practice such information is not known in advance and must be estimated using local blur measures. In this paper, we revisit the image partial blur detection and classification problem and propose several new or enhanced local blur measures using different types of image information including color, gradient and spectral information. The proposed measures demonstrate stronger discriminative power, better across-image stability or higher computational efficiency than previous ones. By learning the optimal combination of these measures with SVM classifiers, we obtain a patch-based image partial blur detector and classifier. Experiments on a large dataset of real images show the proposed approach has superior performance to the state-of-the-art approach.

[1]  Lina J. Karam,et al.  A No-Reference Objective Image Sharpness Metric Based on the Notion of Just Noticeable Blur (JNB) , 2009, IEEE Transactions on Image Processing.

[2]  Tien Tsin,et al.  Image Partial Blur Detection and Classification , 2013 .

[3]  Hubert Konik,et al.  Automatic blur detection for meta-data extraction in content-based retrieval context , 2003, IS&T/SPIE Electronic Imaging.

[4]  Anat Levin,et al.  Blind Motion Deblurring Using Image Statistics , 2006, NIPS.

[5]  Yuan Cheng,et al.  Correcting over-exposure in photographs , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[6]  Michael J. Black,et al.  Fields of Experts: a framework for learning image priors , 2005, 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'05).

[7]  William T. Freeman,et al.  Removing camera shake from a single photograph , 2006, SIGGRAPH 2006.

[8]  D J Field,et al.  Relations between the statistics of natural images and the response properties of cortical cells. , 1987, Journal of the Optical Society of America. A, Optics and image science.

[9]  Qiang Wu,et al.  Motion blur detection based on lowest directional high-frequency energy , 2010, 2010 IEEE International Conference on Image Processing.

[10]  Stefan Winkler,et al.  A no-reference perceptual blur metric , 2002, Proceedings. International Conference on Image Processing.

[11]  Ying Wu,et al.  Estimating space-variant motion blur without deblurring , 2008, 2008 15th IEEE International Conference on Image Processing.

[12]  Peng Wu,et al.  Detection of Out-Of-Focus Digital Photographs , 2005 .

[13]  Jeff A. Bilmes,et al.  A gentle tutorial of the em algorithm and its application to parameter estimation for Gaussian mixture and hidden Markov models , 1998 .

[14]  William T. Freeman,et al.  Analyzing spatially-varying blur , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[15]  Bruce C Hansen,et al.  Discrimination of amplitude spectrum slope in the fovea and parafovea and the local amplitude distributions of natural scene imagery. , 2006, Journal of vision.