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Fingerprint image classification using local diagonal and directional extrema patterns

机译:使用局部对角线和方向极值模式进行指纹图像分类

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Proper classification of fingerprints still poses difficult issues in large-scale databases due to ambiguity in intraclass and interclass structures, discontinuity in low-quality images, and ridges. To address these challenges, we propose a feature named local diagonal and directional extrema pattern (LDDEP) as a descriptor for classification of fingerprints. The proposed method utilizes first-order derivatives to find values and indices of local diagonal and directional extremas. The local extrema values are then compared with the central pixel intensity value to find the correlation with the neighbors. Eventually, the descriptor is generated with the help of the indices and local extrema values. Furthermore, the proposed descriptor is fed into K-nearest neighbor and support vector machine (SVM) for classifying the fingerprint images into four and five groups, respectively. The LDDEP descriptor is compared with the existing methods on two databases, namely National Institute of Standards Technology Special Database 4 (NIST SD 4) and Fingerprint Verification Competition (FVC). Our experiments have shown that, on the 4000 image NIST SD 4 test dataset, the proposed descriptor achieved a classification accuracy of 95.15% for five classes and 96.85% for four classes for half of the dataset, and an accuracy of 95.5% for five classes and 96.63% for four classes for the entire test dataset using SVM classifier. Similarly, FVC databases for the LDDEP descriptor gave classification accuracy of 98.2% using SVM classifier. The proposed method gave higher accuracies compared to the existing methods. (C) 2019 SPIE and IS&T
机译:由于类内和类间结构的歧义性,低质量图像的不连续性和隆起,在大型数据库中,对指纹进行正确的分类仍然会遇到棘手的问题。为了解决这些挑战,我们提出了一种名为局部对角线和方向极值模式(LDDEP)的功能,作为指纹分类的描述符。所提出的方法利用一阶导数来找到局部对角线和方向极值的值和索引。然后将局部极值与中心像素强度值进行比较,以找到与邻居的相关性。最终,在索引和局部极值的帮助下生成描述符。此外,将所提出的描述符输入到K最近邻和支持向量机(SVM)中,以将指纹图像分别分为四组和五组。将LDDEP描述符与两个数据库上的现有方法进行比较,这两个数据库分别是美国国家标准技术研究院特殊数据库4(NIST SD 4)和指纹验证竞赛(FVC)。我们的实验表明,在4000幅图像NIST SD 4测试数据集上,所提出的描述符对五个数据集的分类精度达到了5类的95.15%和46.8%的分类精度,对五个数据类实现了95.5%的精度对于使用SVM分类器的整个测试数据集的四个类别,则为96.63%。同样,使用SVM分类器,用于LDDEP描述符的FVC数据库的分类精度为98.2%。与现有方法相比,该方法具有更高的精度。 (C)2019 SPIE和IS&T

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