Title :
Restoration of a single superresolution image from several blurred, noisy, and undersampled measured images
Author :
Elad, Michael ; Feuer, Arie
Author_Institution :
Technion-Israel Inst. of Technol., Haifa, Israel
fDate :
12/1/1997 12:00:00 AM
Abstract :
The three main tools in the single image restoration theory are the maximum likelihood (ML) estimator, the maximum a posteriori probability (MAP) estimator, and the set theoretic approach using projection onto convex sets (POCS). This paper utilizes the above known tools to propose a unified methodology toward the more complicated problem of superresolution restoration. In the superresolution restoration problem, an improved resolution image is restored from several geometrically warped, blurred, noisy and downsampled measured images. The superresolution restoration problem is modeled and analyzed from the ML, the MAP, and POCS points of view, yielding a generalization of the known superresolution restoration methods. The proposed restoration approach is general but assumes explicit knowledge of the linear space- and time-variant blur, the (additive Gaussian) noise, the different measured resolutions, and the (smooth) motion characteristics. A hybrid method combining the simplicity of the ML and the incorporation of nonellipsoid constraints is presented, giving improved restoration performance, compared with the ML and the POCS approaches. The hybrid method is shown to converge to the unique optimal solution of a new definition of the optimization problem. Superresolution restoration from motionless measurements is also discussed. Simulations demonstrate the power of the proposed methodology
Keywords :
Gaussian noise; image resolution; image restoration; image sampling; maximum likelihood estimation; optimisation; set theory; MAP estimator; ML estimator; POCS; additive Gaussian noise; blurred measured images; geometrically warped images; hybrid method; image restoration theory; linear space-variant blur; linear time-variant blur; maximum a posteriori probability estimator; maximum likelihood estimator; motionless measurements; noisy measured images; nonellipsoid constraints; optimization problem; projection onto convex sets; resolution image; restoration performance; set theoretic; simulations; smooth motion characteristics; superresolution image restoration; undersampled measured images; Additive noise; Frequency domain analysis; Gaussian noise; Image resolution; Image restoration; Maximum likelihood estimation; Motion measurement; Signal resolution; Signal restoration; Spatial resolution;
Journal_Title :
Image Processing, IEEE Transactions on