Jump to content United States-English
HP.com Home Products and Services Support and Drivers Solutions How to Buy
» Contact HP

HP.com home


Technical Reports



» 

HP Labs

» Research
» News and events
» Technical reports
» About HP Labs
» Careers @ HP Labs
» People
» Worldwide sites
» Downloads
Content starts here

 

Blind Image Deconvolution through Support Vector Regression

Li, Dalong; Mersereau, Russell M.; Simske, Steven

HPL-2007-33
External - Copyright Consideration

Keyword(s): blind deconvolution; Lucy-Richardson (LR) algorithm; peak signal-to-noise ratio (PSNR); support vector regression (SVR)

Abstract: This letter introduces a new algorithm for the restoration of a noisy blurred image based on support vector regression (SVR). Experiments show that the performance of SVR is very robust in blind image deconvolution where the types of blurs, point spread function (PSF) support, and noise level are all unknown. Publication Info: Copyright IEEE. Published in IEEE Transactions on Neural Networks, March, 2007.

5 Pages

Back to Index

»Technical Reports

» 2009
» 2008
» 2007
» 2006
» 2005
» 2004
» 2003
» 2002
» 2001
» 2000
» 1990 - 1999

Heritage Technical Reports

» Compaq & DEC Technical Reports
» Tandem Technical Reports
Printable version
Privacy statement Using this site means you accept its terms Feedback to HP Labs
© 2009 Hewlett-Packard Development Company, L.P.