A Framework for Level-1 and Level-2 Feature Level Fusion

D. Poonguzhali, Dr. M. Ezhilarasan
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引用次数: 2

Abstract

The paper presents the feature extraction of level-1 and level-2 fingerprint features. The level-1 features are based on ridges and level-2 features are based on minutiae of the fingerprint, which are used for authentication. The level-1 and level-2 feature level fusion is proposed to enhance the accuracy rate of unibiometric fingerprint authentication system. The performance of this system is evaluated on two publicly available databases and our own database. Fusion scheme is decided depending on the type of information available. Choosing the fusion scheme is important for any multibiometric system as it has significant impact over the performance of the multibiometric system. The identification rate is more in concatenated feature set than for individual feature set. The proposed FFV uses the much richer grey-level information of the fingerprint image. It is also capable of dealing with fingerprints of low quality images from which features cannot be extracted reliably. The results shows that the proposed FFV method outperforms other competing approaches with both EER and DI.
一种一级和二级特征级融合的框架
本文提出了一级和二级指纹特征的特征提取方法。一级特征基于指纹的脊线,二级特征基于指纹的细节,用于身份验证。为了提高单生物指纹认证系统的准确率,提出了一级和二级特征级融合的方法。本系统的性能在两个公开可用的数据库和我们自己的数据库上进行了评估。融合方案取决于可用信息的类型。融合方案的选择对多生物识别系统的性能有着重要的影响。与单个特征集相比,串联特征集的识别率更高。所提出的FFV利用了指纹图像更丰富的灰度信息。它还能够处理低质量图像的指纹,这些图像不能可靠地提取特征。结果表明,所提出的FFV方法在EER和DI方面都优于其他竞争方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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