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Fingerprint Classification Based on Statistical Features and Singular Point Information

机译:基于统计特征和奇异点信息的指纹分类

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摘要

Automatic fingerprint classification is an effective means to increase the matching speed of an Automatic Fingerprint Identification System with a large-scale fingerprint database. In this paper, an automatic fingerprint classification method is proposed to classify the fingerprint image into one of five classes: Arch, Left loop, Right Loop, Whorl and Tented Arch. First, the information of core points, which is detected with a two-stage method, is applied to determine the reference point in fingerprint image. Then three different features based on statistical properties of small image blocks, which are likely to degrade with image quality deterioration, are calculated from the region of interest and form a 300-dimension feature vector. The feature vector is inputted into a three-layer Back Propagation Network (BPN) classifier and a 5-dimension vector is outputted, each dimension of which corresponds to one of 5 fingerprint classes. Finally, the fingerprints are classified with integrate analysis of the BPN classifier output and singular point information. The accuracy of 93.23% with no rejection is achieved on NIST-4 database and experimental results show that the proposed method is feasible and reliable for fingerprint classification.
机译:自动指纹分类是提高自动指纹识别系统与大规模指纹数据库匹配速度的有效手段。本文提出了一种自动指纹分类方法,将指纹图像分为五类:弓形,左环,右环,螺纹和帐篷形。首先,将通过两阶段方法检测到的核心点信息应用于确定指纹图像中的参考点。然后,根据关注区域计算出基于小图像块的统计特性的三个不同特征,这些特征可能会随图像质量下降而下降,并形成一个300维特征向量。将特征向量输入到三层反向传播网络(BPN)分类器中,并输出5维向量,其每个维度对应于5个指纹类别之一。最后,通过对BPN分类器输出和奇异点信息的综合分析对指纹进行分类。在NIST-4数据库上达到了93.23%的无拒绝准确率,实验结果表明,该方法可行,可靠。

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