Title :
Iterative composite filtering for image restoration
Author :
Mallikarjuna, H.S. ; Chaparro, L.F.
Author_Institution :
Dept. of Electr. Eng. of Parks Coll., St. Louis Univ., Cahokia, IL, USA
fDate :
6/1/1992 12:00:00 AM
Abstract :
An algorithm solution to the noisy image restoration problem under assumptions that the image is nonstationary and that the noise process is a superposition of white and impulsive noises is proposed. A composite model is used for the image in order to consider its nonstationarities, in the mean and the autocorrelation. Separating the gross information about the image from its textural information, the authors exploit the advantages of median, range, and Levinson filters in restoring the image. Median statistics are used to estimate the image´s gross information and to filter the impulsive noise. Range statistics are used to segment the textural image into approximately locally stationary images to be filtered by Levenson filters. The proposed restoration algorithm adapts to the nonstationarity of the image, and, thus, it performs well. The algorithm is compared with others based on either median or linear filtering alone
Keywords :
correlation methods; filtering and prediction theory; noise; picture processing; statistics; Levinson filters; autocorrelation; gross information; image restoration; impulsive noises; iterative composite filtering; median filters; nonstationarities; picture processing; range filters; range statistics; textural information; white noise; Autocorrelation; Filtering algorithms; Image restoration; Image segmentation; Information filtering; Information filters; Iterative algorithms; Nonlinear filters; Statistics; White noise;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on