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Image restoration by singular value decomposition

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Abstract

We demonstrate by a computer simulation example that singular value decomposition is a powerful tool for restoring noisy linearly degraded images. We also discuss a way of reducing the computation time requirement.

© 1975 Optical Society of America

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