DocumentCode
2820406
Title
Blur identification and correction for a given imaging system
Author
Chitale, Sucheta ; Padgett, Wayne T.
Author_Institution
Rose-Hulman Inst. of Technol., Terre Haute, IN, USA
fYear
1999
fDate
1999
Firstpage
268
Lastpage
273
Abstract
Estimating the blur function is the first step in all the image restoration techniques. A priori knowledge of the blur phenomenon helps improve the quality and certainty of image restoration. In this paper, a method of estimating the blur function for imaging setups that are not subject to change, for example surveillance cameras, is developed using the Wiener filter. A random noise image is used as a test image. Deconvolution is performed between the original test image and its observation taken from the given imaging system, to obtain the blur estimate for the system. Necessary preprocessing steps are implemented to compensate for the non-ideal nature of the imaging environment. Blur correction is then implemented on different observations taken from the same imaging system. The performance of the restoration is evaluated using mean square error and signal to noise improvement criteria
Keywords
Wiener filters; cameras; deconvolution; filtering theory; image enhancement; image restoration; mean square error methods; random noise; surveillance; MSE; SNR; Wiener filter; blur correction; blur function estimation; blur identification; deconvolution; image enhancement; image restoration; imaging system; mean square error; preprocessing steps; random noise image; signal to noise ratio; surveillance cameras; test image; Cameras; Deconvolution; Image restoration; Mean square error methods; Performance evaluation; Signal restoration; Surveillance; System testing; Wiener filter; Working environment noise;
fLanguage
English
Publisher
ieee
Conference_Titel
Southeastcon '99. Proceedings. IEEE
Conference_Location
Lexington, KY
Print_ISBN
0-7803-5237-8
Type
conf
DOI
10.1109/SECON.1999.766138
Filename
766138
Link To Document