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A Programming Based Boosting in Super-Classifier for Fingerprint Recognition

机译:用于指纹识别超级分类器中基于编程的升压

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A super-classifier with programming based boosting has been designed and established for fingerprint recognition. This multiple classifier set is comprised of three different classifiers. The first classifier is an OCA based modified RBFN with BP learning, second classifier is a combination of Malsburg learning and BP Network and third classifier is a SOM based modified RBFN with BP learning. These three individual classifiers perform fingerprint identification separately and these are fused together in a super-classifier which integrates the different conclusions using programming based boosting to perform the final decision regarding recognition. The learning of the system is efficient and effective. Also the performance measurement of the system in terms of accuracy, TPR, FPR and FNR of the classifier are substantially high and the recognition time of fingerprints are quite affordable.
机译:设计并建立了一种具有基于编程的升压的超级分类器,用于指纹识别。该多分类器组由三个不同的分类器组成。第一分类器是具有BP学习的基于OCA的修改RBFN,第二分类器是MALSBURG学习的组合,BP网络和第三分类器是基于SOM的改进RBFN,具有BP学习。这三个单独的分类器分别执行指纹识别,并且这些在超级分类器中融合在一起,该超级分类器使用基于编程的升压集成不同的结论来执行关于识别的最终决策。该系统的学习是有效且有效的。此外,在分级器的精度,TPR,FPR和FNR方面的系统的性能测量基本上高,指纹的识别时间是非常实惠的。

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