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Titlebook: Recent Advances in Intelligent Informatics; Proceedings of the S Sabu M. Thampi,Ajith Abraham,Juan Manuel Corchado Conference proceedings

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Classification Approach Based on Rough Mereology,ory of rough mereology and fuzzification in order to classify input datasets into sets of optimized granules. The proposed approach was applied to five datasets of the UC Irvine Machine Learning Repository. The Abalone dataset that consists of 4177 objects and eight attributes was selected as an ill
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Mathematical Morphology Based Fovea Center Detection Using Retinal Fundus Images,ative location of the optic disc, mathematical morphology is used to detect fovea center. The proposed method is robust to inconveniences caused by diabetic retinopathy lesions like microaneurysms, hemorrhages and exudates. Experiments were performed on local and public databases that yielded success rate of 91.38 % and 91.75 %, respectively.
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Speaker Recognition Using MFCC and Hybrid Model of VQ and GMM,oth text dependent and text independent speech and uses relative index as confidence measures in case of contradiction in recognition process by GMM and VQ. Simulation results highlight the efficacy of proposed method compared to earlier work.
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Document Classification: An Approach Using Feature Clustering,aïve Bayes, k-NN, Centroid based and SVM classifiers. The experimental results reveal that the achieved classification accuracy is better than that of the existing methods. In addition our method is based on a simple matching scheme; it requires negligible time for classification.
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