Title :
A robust nonlinear filter for image restoration
Author_Institution :
Dept. of Electr. Eng., Oulu Univ., Finland
fDate :
5/1/1995 12:00:00 AM
Abstract :
A class of nonlinear regression filters based on robust estimation theory is introduced. The goal of the filtering is to recover a high-quality image from degraded observations. Models for desired image structures and contaminating processes are employed, but deviations from strict assumptions are allowed since the assumptions on signal and noise are typically only approximately true. The robustness of filters is usually addressed only in a distributional sense, i.e., the actual error distribution deviates from the nominal one. In this paper, the robustness is considered in a broad sense since the outliers may also be due to inappropriate signal model, or there may be more than one statistical population present in the processing window, causing biased estimates. Two filtering algorithms minimizing a least trimmed squares criterion are provided. The design of the filters is simple since no scale parameters or context-dependent threshold values are required. Experimental results using both real and simulated data are presented. The filters effectively attenuate both impulsive and nonimpulsive noise while recovering the signal structure and preserving interesting details
Keywords :
estimation theory; filtering theory; image enhancement; image restoration; least squares approximations; nonlinear filters; statistical analysis; biased estimates; error distribution; experimental results; filtering algorithms; image contaminating processes; image restoration; image structures; impulsive noise; least trimmed squares criterion; nonimpulsive noise; nonlinear regression filters; processing window; real data; robust estimation theory; robust nonlinear filter; signal model; signal structure recovery; simulated data; statistical population; Degradation; Estimation theory; Filtering theory; Finite impulse response filter; Image restoration; Least squares methods; Noise robustness; Nonlinear filters; Signal processing; Statistics;
Journal_Title :
Image Processing, IEEE Transactions on