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A Fingerprint Classification Algorithm Based on Combination of Local and Global Information

机译:基于局部和全局信息相结合的指纹分类算法

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Fingerprint recognition is one of the most important technologies in biometric identification and has been wildly applied in commercial and forensic areas. Fingerprint classification, as the fundamental procedure in fingerprint recognition, can sharply decrease the quantity for fingerprint matching and improve the efficiency of fingerprint recognition. Most fingerprint classification algorithms are based on the number and position of singular points. Because the singular points detecting method only considers the local information commonly, the classification algorithms are sensitive to noise. In this paper, we propose a novel fingerprint classification algorithm combining the local and global information of fingerprint. Firstly we use local information to detect singular points and measure their quality considering orientation structure and image texture in adjacent areas. Furthermore the global orientation model is adopted to measure the reliability of singular points group. Finally the local quality and global reliability is weighted to classify fingerprint. Experiments demonstrate the accuracy and effectivity of our algorithm especially for the poor quality fingerprint images.
机译:指纹识别是生物特征识别中最重要的技术之一,已在商业和法医领域得到广泛应用。指纹分类作为指纹识别的基本程序,可以大大减少指纹匹配的数量,提高指纹识别的效率。大多数指纹分类算法都是基于奇异点的数量和位置。由于奇异点检测方法通常只考虑本地信息,因此分类算法对噪声敏感。在本文中,我们提出了一种新颖的指纹分类算法,该算法结合了指纹的局部和全局信息。首先,我们使用局部信息来检测奇异点,并考虑方向结构和相邻区域中的图像纹理来测量奇异点的质量。此外,采用全局方向模型来测量奇异点组的可靠性。最后,对本地质量和全局可靠性进行加权以对指纹进行分类。实验证明了我们算法的准确性和有效性,特别是对于质量较差的指纹图像。

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