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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Combining flat and structured representations for fingerprint classification with recursive neural networks and support vector machines
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Combining flat and structured representations for fingerprint classification with recursive neural networks and support vector machines

机译:结合用于递归神经网络和支持向量机的指纹分类的平面和结构化表示

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摘要

We present new fingerprint classification algorithms based on two machine teaming approaches: support vector machines (SVMs) and recursive neural networks (RNNs). RNNs are trained on a structured representation of the fingerprint image. They are also used to extract a set of distributed features of the fingerprint which can be integrated in the SVM. SVMs are combined with a new error-correcting code scheme. This approach has two main advantages: (a) It can tolerate the presence of ambiguous fingerprint images in the training set and (b) it can effectively identify the most difficult fingerprint images in the test set. By rejecting these images the accuracy of the system improves significantly. We report experiments on the fingerprint database NIST-4. Our best classification accuracy is of 95.6 percent at 20 percent rejection rate and is obtained by training SVMs on both FingerCode and RNN-extracted features. This result indicates the benefit of integrating global and structured representations and suggests that SVMs are a promising approach for fingerprint classification. (C) 2002 Published by Elsevier Science Ltd on behalf of Pattern Recognition Society. [References: 37]
机译:我们基于两种机器组合方法提出了新的指纹分类算法:支持向量机(SVM)和递归神经网络(RNN)。 RNN在指纹图像的结构化表示上进行训练。它们还用于提取指纹的一组分布式特征,这些特征可以集成到SVM中。 SVM与新的纠错码方案结合在一起。这种方法有两个主要优点:(a)可以容忍训练集中的模糊指纹图像的存在;(b)可以有效地识别测试集中最困难的指纹图像。通过拒绝这些图像,系统的准确性得到了显着提高。我们在指纹数据库NIST-4上报告了实验。通过在FingerCode和RNN提取的特征上对SVM进行训练,我们可以在20%的拒绝率下达到95.6%的最佳分类精度。该结果表明整合全局表示和结构化表示的好处,并表明SVM是一种有前途的指纹分类方法。 (C)2002由Elsevier Science Ltd代表模式识别协会出版。 [参考:37]

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