Publication | Closed Access
An improved fuzzy clustering approach for image segmentation
15
Citations
8
References
2010
Year
Unknown Venue
Fuzzy LogicImage AnalysisSpatial InformationEngineeringStandard Fuzzy C-meansPattern RecognitionAutomated Image SegmentationFuzzy ComputingFuzzy Pattern RecognitionEdge DetectionFuzzy ClusteringImage SegmentationComputer Vision
Fuzzy clustering techniques have been widely used in automated image segmentation. However, since the standard fuzzy c-means (FCM) clustering algorithm does not consider any spatial information, it is highly sensitive to noise. In this paper, we present an extension of the FCM algorithm to overcome this drawback, by incorporating spatial neighborhood information into a new similarity measure. We consider that spatial information depends on the relative location and features of the neighboring pixels. The performance of the proposed algorithm is tested on synthetic and real images with different noise levels. Experimental quantitative and qualitative segmentation results show that the proposed method is effective, more robust to noise and preserves the homogeneity of the regions better than other FCM-based methods.
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