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Wiener filtering Model filtering f x,y s x,y [ ] g x,y [ ] & noise [ ] recovery filter Minimize mean squared estimation error Power spectral density of estimation error Digital Image Processing: Bernd Girod, © 2013 Stanford University -- Linear Image Processing and Filtering 56 Review: Power spectrum and cross spectrum 2-d discrete-space cross correlation function for ergodic, stationary signals Special case: autocorrelation function Cross spectral density Power spectral density Digital Image Processing: Bernd Girod, © 2013 Stanford University -- Linear Image Processing and Filtering 57 Wiener filtering (cont.) Power spectrum is minimized separately at each frequency if Can be shown to be global minimum by considering filter Digital Image Processing: Bernd Girod, © 2013 Stanford University -- Linear Image Processing and Filtering 58 Wiener filter for linear distortion and additive noise statistically independent n x,y [ ] ∑ f x,y s x,y [ ] g x,y [ ] [ ] Digital Image Processing: Bernd Girod, © 2013 Stanford University -- Linear Image Processing and Filtering 59
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