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A Robust Wavelet-based Approach to Fingerprint Indentification

机译:基于鲁棒小波的指纹识别方法

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摘要

A robust fingerprint recognition system based on marginal statistics of 2D wavelet transform is introduced which significantly improves the accuracy of previous wavelet based approaches due to 1) a better selection of features extracted from the wavelet transform, and 2) a more accurate distance measure to find the similarity between fingerprints. A combination of Jain and Poincare algorithms is employed to locate the fingerprint reference point. The main part of the fingerprint image is chosen as a rectangle with the reference point at its center. The image is then divided into nonoverlapping sub-images, the wavelet transform is applied to the bi-level sub-images, and Generalized Gaussian Density (GGD) features are extracted from each wavelet sub band. Finally, the fingerprint recognition is done through the k-Nearest Neighbor (k-NN) classification employing Kullback-Leibler Distance (KLD) measure. Our test results confirm the superiority of the proposed method over the current fingerprint recognition methods.
机译:引入了基于2D小波变换边际统计的鲁棒指纹识别系统,由于1)更好地选择了从小波变换中提取的特征,以及2)更加精确的距离测度,从而显着提高了先前基于小波的方法的准确性。指纹之间的相似性。使用Jain和Poincare算法的组合来定位指纹参考点。指纹图像的主要部分被选择为以参考点为中心的矩形。然后将图像分为不重叠的子图像,将小波变换应用于双层子图像,并从每个小波子带中提取广义高斯密度(GGD)特征。最后,通过使用Kullback-Leibler距离(KLD)度量的k最近邻(k-NN)分类来完成指纹识别。我们的测试结果证实了该方法相对于当前指纹识别方法的优越性。

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