Digital Image Processing
Preface When something can be read without effort, great effort has gone into its writing. Enrique Jardiel Poncela This edition of Digital Image Processingis a major revision of the book.As in the 1977 and 1987 editions by Gonzalez and Wintz,and the 1992 and 2002 edi-
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