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Digital Image Processing Prentice Hall Ceccarelli M

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Bibliografia

Ballard & Brown

- Computer Vision Prentice Hall Castleman K.R.

- Digital Image Processing Prentice Hall

Ceccarelli M.

- Metodi il trattamento numerico dei dati multimediali Glassner A.S.

- Principle of digital image processing Kaufmann M.

Melli P.

- L’elaborazione digitale dell’immagine Angeli

Rapitron S.r.l.

- Guida alle telecamere industriali Umbaugh E.S.

- Computer vision and image processing Prentice Hall

Watt A. ; Policarpo F.

- The Computer Image Addison-Wesley Zamperoni G.

- Metodi dell’elaborazione digitale di immagini Masson

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