A fingerprint segmentation method using a recurrent neural network

S. Sato, T. Umezaki
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引用次数: 3

Abstract

In this paper, we propose a segmentation method for identifying a fingerprint image with the variation of vertical length using a recurrent neural network (RNN). Group delay spectra and histograms of horizontal pixel line are used as input features fed into the RNN and two target output patterns with and without consideration of state dependency are introduced for learning. The method composed of the histogram learning and the state-dependent target indicates the best performance. When the tolerable segmentation error is 60 pixels, a segmentation rate of 97.2% is obtained. In comparison with the rule-based method, this method has an advantage of about 10%. Furthermore, we show that this method has a characteristic different from the rule-based method in regard to segmentation faults, and the learning with the state-dependent target is more effective than that without the dependency.
一种基于递归神经网络的指纹分割方法
本文提出了一种基于递归神经网络(RNN)的指纹图像垂直长度变化分割方法。采用群延迟谱和水平像素线直方图作为RNN的输入特征,引入考虑状态依赖和不考虑状态依赖的两种目标输出模式进行学习。直方图学习与状态相关目标相结合的方法表现出最好的性能。当可容忍分割误差为60像素时,分割率为97.2%。与基于规则的方法相比,该方法的优势约为10%。此外,我们还证明了该方法在分割错误方面具有不同于基于规则的方法的特点,并且具有状态依赖目标的学习比没有依赖目标的学习更有效。
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