Paper
22 May 2002 Clustering granulometric features
Author Affiliations +
Proceedings Volume 4667, Image Processing: Algorithms and Systems; (2002) https://doi.org/10.1117/12.468006
Event: Electronic Imaging, 2002, San Jose, California, United States
Abstract
Granulometric features have been widely used for classification, segmentation and recently in estimation of parameters in shape models. In this paper we study the inference of clustering based on granulometric features for a collection of structuring probes in the context of random models. We use random Boolean models to represent grains of different shapes and structure. It is known that granulometric features are excellent descriptors of shape and structure of grains. Inference based on clustering these features helps to analyze the consistency of these features and clustering algorithms. This greatly aids in classifier design and feature selection. Features and the order of their addition play a role in reducing the inference errors. We study four different types of feature addition methods and the effect of replication in reducing the inference errors.
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Marcel Brun, Yoganand Balagurunathan, Junior Barrera, and Edward R. Dougherty "Clustering granulometric features", Proc. SPIE 4667, Image Processing: Algorithms and Systems, (22 May 2002); https://doi.org/10.1117/12.468006
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KEYWORDS
Statistical modeling

Image processing

Fuzzy logic

Affine motion model

Feature selection

Process modeling

Statistical analysis

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