Efficient blur estimation using multi-scale quadrature filters
Autor: | Filip Rooms, Wilfried Philips, Seyfollah Soleimani |
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Rok vydání: | 2013 |
Předmět: |
Image fusion
Scale (ratio) business.industry Gaussian ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION Gaussian blur Image processing Real image symbols.namesake Kernel (image processing) Control and Systems Engineering Computer Science::Computer Vision and Pattern Recognition Signal Processing symbols Computer vision Computer Vision and Pattern Recognition Artificial intelligence Electrical and Electronic Engineering business Algorithm Software Mathematics Second derivative |
Zdroj: | Signal Processing. 93:1988-2002 |
ISSN: | 0165-1684 |
Popis: | Blur estimation is required in image processing techniques such as auto-focussing, quality assessment for compressed images and image fusion. In this paper a multi-scale local blur estimation method is proposed. We use the energy of a pair of quadrature filters with first and second derivatives of a Gaussian at several scales as its constituents. A new strategy for analyzing the extrema of energy across scale is proposed. Comparing to the methods which use just a Gaussian first derivative kernel, a smaller number of scales needs to be processed. Also our method yields only one response at the centroid of line-shape features at a position independent of the scale. This is in contrast to other methods which yield multiple responses at scale dependent positions. We evaluated the method for synthetic and real images from the LIVE database. Depending on details of the image, the proposed method is several to tens of times faster in comparison with using just a Gaussian first derivative. The accuracy of the blur estimation is found to be the best or second best while comparing with 16 different methods for Gaussian blur. In addition, the performance is still good for motion blurred images. |
Databáze: | OpenAIRE |
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