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A fingerprint identification algorithm by clustering similarity

机译:聚类相似度的指纹识别算法

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摘要

This paper introduces a fingerprint identification algorithm by clustering similarity with the view to overcome the dilemmas encountered in fingerprint identification. To decrease multi-spectrum noises in a fingerprint, we first use a dyadic scale space (DSS) method for image enhancement. The second step describes the relative features among minutiae by building a minutia-simplex which contains a pair of minutiae and their local associated ridge information, with its transformation-variant and invariant relative features applied for comprehensive similarity measurement and for parameter estimation respectively. The clustering method is employed to estimate the transformation space. Finally, multi-resolution technique is used to find an optimal transformation model for getting the maximal mutual information between the input and the template features. The experimental results including the performance evaluation by the 2nd International Verification Competition in 2002 (FVC2002), over the four fingerprint databases of FVC2002 indicate that our method is promising in an automatic fingerprint identification system (AFIS).
机译:本文提出了一种基于相似度聚类的指纹识别算法,以克服指纹识别中遇到的难题。为了减少指纹中的多光谱噪声,我们首先使用二进比例尺空间(DSS)方法进行图像增强。第二步通过构建包含一对细节及其局部关联脊信息的细节简化来描述细节之间的相对特征,并将其变换变量和不变相对特征分别应用于全面相似性测量和参数估计。采用聚类方法估计变换空间。最后,使用多分辨率技术找到最佳的转换模型,以获取输入和模板特征之间的最大互信息。实验结果包括2002年第二届国际验证竞赛(FVC2002)对FVC2002的四个指纹数据库的性能评估,表明我们的方法在自动指纹识别系统(AFIS)中很有希望。

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