DocumentCode :
118774
Title :
Modified deconvolution using wavelet image fusion
Author :
McLaughlin, Michael J. ; En-Ui Lin ; Blasch, Erik ; Bubalo, Adnan ; Cornacchia, Maria ; Alford, Mark ; Thomas, Millicent
Author_Institution :
Soundararajan Ezekiel, Indiana Univ. of PA, Indiana, PA, USA
fYear :
2014
fDate :
14-16 Oct. 2014
Firstpage :
1
Lastpage :
6
Abstract :
Image quality is affected by two predominant factors, noise and blur. Blur typically manifests itself as a smoothing of edges, and can be described as the convolution of an image with an unknown blur kernel. The inverse of convolution is deconvolution, a difficult process even in the absence of noise, which aims to recover the true image. Removing blur from an image has two stages: identifying or approximating the blur kernel, then performing a deconvolution of the estimated kernel and blurred image. Blur removal is often an iterative process, with successive approximations of the kernel leading to optimal results. However, it is unlikely that a given image is blurred uniformly. In real world situations most images are already blurred due to object motion or camera motion/de focus. Deconvolution, a computationally expensive process, will sharpen blurred regions, but can also degrade the regions previously unaffected by blur. To remedy the limitations of blur deconvolution, we propose a novel, modified deconvolution, using wavelet image fusion (moDuWIF), to remove blur from a no-reference image. First, we estimate the blur kernel, and then we perform a deconvolution. Finally, wavelet techniques are implemented to fuse the blurred and deblurred images. The details in the blurred image that are lost by deconvolution are recovered, and the sharpened features in the deblurred image are retained. The proposed technique is evaluated using several metrics and compared to standard approaches. Our results show that this approach has potential applications to many fields, including: medical imaging, topography, and computer vision.
Keywords :
approximation theory; cameras; deconvolution; image fusion; iterative methods; smoothing methods; wavelet transforms; blur deconvolution; blur removal; blurred image; camera defocus; camera motion; edge smoothing; image convolution; image quality; iterative process; modified deconvolution; no-reference image; object motion; successive approximations; unknown blur kernel; wavelet image fusion; Deconvolution; Image fusion; Kernel; Manifolds; Measurement; Multiresolution analysis; Wavelet transforms; Blur; Deconvolution; Image Fusion; Image Quality Assessment; No-reference Image; Wavelet;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Applied Imagery Pattern Recognition Workshop (AIPR), 2014 IEEE
Conference_Location :
Washington, DC
Type :
conf
DOI :
10.1109/AIPR.2014.7041900
Filename :
7041900
Link To Document :
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