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Deconvolution / Applied mathematics / Science / Point spread function / Microscopy / Unsharp masking / Linear least squares / Regularization / Noise reduction / Image processing / Signal processing / Statistics
Date: 2013-11-27 16:21:09
Deconvolution
Applied mathematics
Science
Point spread function
Microscopy
Unsharp masking
Linear least squares
Regularization
Noise reduction
Image processing
Signal processing
Statistics

Optics Communications[removed]–49 www.elsevier.com/locate/optcom

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