Morphological Operators for Binary

نویسنده

  • Henk J A M Heijmans
چکیده

This paper presents a comprehensive discussion on connected morphological operators for binary images. Introducing a connectivity on the underlying space, every image induces a partition of the space in foreground and background components. A connected operator is an operator that coarsens this partition for every input image. A connected operator is called a grain operator if it has the followingìocal property': the value of the output image at a given point x is exclusively determined by the zone of the partition of the input image that contains x. Every grain operator is uniquely speciied by two grain criteria, one for the foreground and one for the background components. A well-known criterion is the area criterion demanding that the area of a zone is not below a given threshold. The second part of the paper is devoted to connected lters and grain lters. It is shown that alternating sequential lters resulting from grain openings and closings are strong lters and obey a strong absorption property, two properties that do not hold in the classical non-connected case.

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تاریخ انتشار 1999