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A Fuzzy Framework for Segmentation, Feature Matching and Retrieval of Brain MR Images


Affiliations
1 Department of Information Science and Technology, College of Engineering, Guindy, India
 

This paper proposes a complete framework based on fuzzy logic, for the retrieval of MRI images of the brain. In our system, the MRI image is segmented using the fuzzy local information c means (FLICM) algorithm. Region, location and shape properties are extracted from each region. These properties are represented as fuzzy features. Thus each image is represented by a set of fuzzy features corresponding to the various regions obtained after segmentation. To compute the overall similarity between two images, unified feature matching (UFM) is used. This measure integrates the properties of all the regions in an image. Our system can be applied to distinguish between the tumor and normal magnetic resonance images. Also the location feature of each region, especially of the tumor region, obtained after segmentation can be used to determine the type and symptoms of the brain tumor. Images from the brain web were used for experimentation.

Keywords

Fuzzy Logic, Segmentation, Clustering, Feature Matching, Fuzzy Similarity.
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  • A Fuzzy Framework for Segmentation, Feature Matching and Retrieval of Brain MR Images

Abstract Views: 342  |  PDF Views: 124

Authors

S. Archana
Department of Information Science and Technology, College of Engineering, Guindy, India
S. Sridhar
Department of Information Science and Technology, College of Engineering, Guindy, India

Abstract


This paper proposes a complete framework based on fuzzy logic, for the retrieval of MRI images of the brain. In our system, the MRI image is segmented using the fuzzy local information c means (FLICM) algorithm. Region, location and shape properties are extracted from each region. These properties are represented as fuzzy features. Thus each image is represented by a set of fuzzy features corresponding to the various regions obtained after segmentation. To compute the overall similarity between two images, unified feature matching (UFM) is used. This measure integrates the properties of all the regions in an image. Our system can be applied to distinguish between the tumor and normal magnetic resonance images. Also the location feature of each region, especially of the tumor region, obtained after segmentation can be used to determine the type and symptoms of the brain tumor. Images from the brain web were used for experimentation.

Keywords


Fuzzy Logic, Segmentation, Clustering, Feature Matching, Fuzzy Similarity.