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基于重建的指节纹验证与分数级自适应二进制融合。

Reconstruction based finger-knuckle-print verification with score level adaptive binary fusion.

出版信息

IEEE Trans Image Process. 2013 Dec;22(12):5050-62. doi: 10.1109/TIP.2013.2281429.

Abstract

Recently, a new biometrics identifier, namely finger knuckle print (FKP), has been proposed for personal authentication with very interesting results. One of the advantages of FKP verification lies in its user friendliness in data collection. However, the user flexibility in positioning fingers also leads to a certain degree of pose variations in the collected query FKP images. The widely used Gabor filtering based competitive coding scheme is sensitive to such variations, resulting in many false rejections. We propose to alleviate this problem by reconstructing the query sample with a dictionary learned from the template samples in the gallery set. The reconstructed FKP image can reduce much the enlarged matching distance caused by finger pose variations; however, both the intra-class and inter-class distances will be reduced. We then propose a score level adaptive binary fusion rule to adaptively fuse the matching distances before and after reconstruction, aiming to reduce the false rejections without increasing much the false acceptances. Experimental results on the benchmark PolyU FKP database show that the proposed method significantly improves the FKP verification accuracy.

摘要

最近,一种新的生物识别标识符,即指节指纹(FKP),已经被提出用于个人认证,并取得了非常有趣的结果。FKP 验证的一个优点在于其在数据采集方面的用户友好性。然而,用户在定位手指时的灵活性也导致了采集到的查询 FKP 图像存在一定程度的姿态变化。广泛使用的基于 Gabor 滤波的竞争编码方案对这种变化很敏感,导致许多误拒。我们提出通过从图库集中的模板样本中学习字典来重建查询样本,从而缓解这个问题。重建的 FKP 图像可以减少手指姿态变化引起的匹配距离的扩大,但同时也会减少类内和类间的距离。然后,我们提出了一种基于得分级别的自适应二进制融合规则,自适应地融合重建前后的匹配距离,旨在在不增加误接受率的情况下减少误拒绝率。在 PolyU FKP 基准数据库上的实验结果表明,所提出的方法显著提高了 FKP 验证的准确性。

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