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Fingerprint classification based on Adaboost learning from singularity features

机译:基于奇异特征学习的Adaboost指纹分类

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摘要

Fingerprint classification is an important indexing scheme to narrow down the search of fingerprint database for efficient large-scale identification. it is still a challenging problem due to the intrinsic class ambiguity and the difficulty for poor quality fingerprints. In this paper, we presents a fingerprint classification algorithm that uses Adaboost learning method to model multiple types of singularity features. Firstly, complex filters are used to detect the singularities. For powerful representation, we compute the complex filter responses of the detected singularities at multiple scales and a feature vector is constructed for each scale that consists of the relative position and direction and the certainties of the singularities. Adaboost learning method is then applied on decision trees to design a classifier for fingerprint classification. Finally, fingerprint class is determined by the ensemble of the classification results at multiple scales. The experimental results and comparisons on NIST-4 database have shown the effectiveness and superiority of the fingerprint classification algorithm.
机译:指纹分类是一种重要的索引方案,可以缩小对指纹数据库的搜索范围,以进行有效的大规模识别。由于内在类的模糊性和低质量指纹的困难,这仍然是一个具有挑战性的问题。在本文中,我们提出了一种指纹分类算法,该算法使用Adaboost学习方法对多种类型的奇异特征进行建模。首先,使用复杂的滤波器来检测奇异点。对于强大的表示,我们在多个尺度上计算检测到的奇点的复杂滤波器响应,并为每个尺度构建一个特征向量,该特征向量由相对位置和方向以及奇点的确定性组成。然后将Adaboost学习方法应用于决策树,以设计用于指纹分类的分类器。最后,指纹分类是由分类结果的整体确定的。在NIST-4数据库上的实验结果和比较结果表明,该指纹分类算法的有效性和优越性。

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