Proceedings Article10.1109/ICPR.1992.201924
Moment based texture segmentation
Mihran Tuceryan
- 30 Aug 1992
- Vol. 15, Iss: 7, pp 45-48
TL;DR: The moment based texture segmentation algorithm has successfully segmented binary images containing textures with identical second-order statistics as well as a number of natural gray level texture images.
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Abstract: Texture segmentation is one of the early steps towards identifying surfaces and objects in an image. In the paper a moment based texture segmentation algorithm is presented. The moments in small windows of the image are used as texture features which are then used to segment the textures. The algorithm has successfully segmented binary images containing textures with identical second-order statistics as well as a number of natural gray level texture images. >
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References
•Book
Fundamentals of digital image processing
Anil K. Jain
- 03 Oct 1988
TL;DR: This chapter discusses two Dimensional Systems and Mathematical Preliminaries and their applications in Image Analysis and Computer Vision, as well as image reconstruction from Projections and image enhancement.
9K
Visual pattern recognition by moment invariants
TL;DR: It is shown that recognition of geometrical patterns and alphabetical characters independently of position, size and orientation can be accomplished and it is indicated that generalization is possible to include invariance with parallel projection.