Title :
Small convolution kernels for high-fidelity image restoration
Author :
Reichenbach, Stephen E. ; Park, Stephen K.
Author_Institution :
Dept. of Comput. Sci. & Eng., Nebraska Univ., Lincoln, NE, USA
fDate :
10/1/1991 12:00:00 AM
Abstract :
An algorithm is developed for computing the mean-square-optimal values for small, image-restoration kernels. The algorithm is based on a comprehensive, end-to-end imaging system model that accounts for the important components of the imaging process: the statistics of the scene, the point-spread function of the image-gathering device, sampling effects, noise, and display reconstruction. Subject to constraints on the spatial support of the kernel, the algorithm generates the kernel values that restore the image with maximum fidelity, that is, the kernel minimizes the expected mean-square restoration error. The algorithm is consistent with the derivation of the spatially unconstrained Wiener filter, but leads to a small, spatially constrained kernel that, unlike the unconstrained filter, can be efficiently implemented by convolution. Simulation experiments demonstrate that for a wide range of imaging systems these small kernels can restore images with fidelity comparable to images restored with the unconstrained Wiener filter
Keywords :
filtering and prediction theory; picture processing; display reconstruction; end-to-end imaging system model; image restoration; image-gathering device; mean-square restoration error; noise; point-spread function; sampling effects; small convolution kernels; statistics; Convolution; Digital images; Displays; Image restoration; Image sampling; Kernel; Layout; Optical imaging; Pixel; Wiener filter;
Journal_Title :
Signal Processing, IEEE Transactions on