一种改进的指纹图像分割方法

Rojas Vda, S.J.L. Aching
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引用次数: 8

摘要

本文提出了一种改进的逐像素分割方法。从每个像素提取三个特征,线性分类器将像素与背景或前景相关联。由于该技术需要在分类的准确性和计算工作量之间进行权衡,我们提出了一种改进的编辑压缩技术,从原始训练集中选择一个简化的具有代表性的参考集。此外,由于这是一个线性不可分的分类问题,我们提出了模糊感知器学习方法来获得最优的鲁棒线性分类器。实验结果表明,采用该方法可以减少epoch数,减少分类误差
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An Improved Method for Segmentation of Fingerprint Images
In this work, an improved method for the pixel-wise segmentation technique is presented. Three features are extracted from each pixel and a linear classifier associates the pixel with the background or the foreground. Since this technique requires a trade-off between the accuracy of the classification and the computational effort, we propose a modified editing-condensing technique to select a reduced and representative reference set from the original training set. Also, because this is a linearly nonseparable classification problem, we propose the fuzzy perceptron learning method to obtain an optimal and robust lineal classifier. Experiments have shown that using the proposed method a reduced number of epochs and classification errors were obtained
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