Adaptive SIFT-Based Algorithm for Specific Fingerprint Verification

Ruili Zhou, SangWoo Sin, Dongju Li, T. Isshiki, H. Kunieda
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引用次数: 17

Abstract

The performance of an fingerprint authentication algorithm can be decreased significantly if the fingerprint image has lots of broken ridges caused by cutline, or the overlap area between the template and input is very small. For the purpose of these specific kinds of verification, a Scale Invariant Feature Transformation (SIFT) feature-based algorithm for fingerprint verification is presented. This approach is not based on traditional minutiae or ridge features. The SIFT keypoints in Gaussian scale-space and the local descriptor for each SIFT keypoint can be extracted by using this method. The verification is done by matching the descriptor, which is invariant to image scale and rotation. In this paper a proper pre-processing is carried out on the fingerprint image instead of using the original fingerprint image. This can make the algorithm adaptive to the variation of the impression condition. Furthermore, a Hough transform adapted to fingerprint verification is performed rather than only using SIFT keypoint descriptor matching. The fusion with minutiae information is also applied for efficiency and accuracy. Two specific databases are captured for experiments. Experiment results of proposed algorithm on specific databases show significant improvement compared with common minutiae-based method. Experiment results on FVC2002 Database show that Equal Error Rate (EER) and False Matching Rate (FMR) of our proposed algorithm can be decreased to about 20% of previous SIFT-based works.
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基于sift的自适应指纹验证算法
如果指纹图像中存在大量由切线引起的断脊,或者模板与输入之间的重叠区域很小,则指纹认证算法的性能会显著降低。针对这些特定类型的指纹验证,提出了一种基于尺度不变特征变换(SIFT)特征的指纹验证算法。这种方法不是基于传统的细枝末节或山脊特征。利用该方法可以提取高斯尺度空间中的SIFT关键点和每个SIFT关键点的局部描述符。通过匹配描述符来进行验证,该描述符与图像缩放和旋转无关。本文不使用原始指纹图像,而是对指纹图像进行适当的预处理。这使算法能够适应压痕条件的变化。此外,采用适合指纹验证的霍夫变换,而不是仅使用SIFT关键点描述符匹配。为了提高效率和准确性,还应用了与细节信息的融合。捕获两个特定的数据库用于实验。在特定数据库上的实验结果表明,该算法与常用的基于最小值的方法相比有显著的改进。在FVC2002数据库上的实验结果表明,该算法的等错误率(EER)和误匹配率(FMR)比以往基于sift的算法降低了20%左右。
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