基于Kohonens特征映射的自适应自动五类指纹分类方案

T. Srinivasan, S. Shivashankar, V. Archana, B. Rakesh
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引用次数: 1

摘要

本文提出了一种新的自适应自动指纹分类方案,该方案计算效率高,能同时解决类内多样性和类间相似性问题。首先,对指纹图像进行预处理,增强图像。对于基于全局形状的分类,计算方向图像。第一阶段采用主成分分析进行降维,得到尽可能多地占总变异的特征空间;第二阶段采用自组织映射进行进一步降维和数据聚类。我们使用Kohonen拓扑图进行模式分类。学习过程考虑了班级内部的多样性和指纹模式类型的连续性。最后LVQ2将类分离的指纹图像映射到各自的类中,获胜者和亚军神经元以考虑类间相似性的方式进行训练。实验结果表明,在NIST 4上测试的五类分类中,AAFFC的准确率在89%左右,没有被拒绝
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AAFFC: An Adaptively Automated Five-Class Fingerprint Classification Scheme Using Kohonens Feature Map
In this paper, we present a novel adaptively automated fingerprint classification scheme, which is computationally efficient and resolves both intra-class diversities and inter-class similarities. Initially, preprocessing of fingerprint images is carried out to enhance the image. For classification based on global shape, directional image is computed. Principal component analysis is employed in first stage for dimensionality reduction and to get feature space that accounts for as much of the total variation as possible. In second stage, self-organizing maps are involved for further dimension reduction and data clustering. We use the Kohonen topological map for pattern classification. The learning process takes into account the large intra class diversity and the continuum of fingerprint pattern types. Finally LVQ2 maps the class separated fingerprint images into their respective class, the winner and runner-up neuron are trained in such a way that they take into account the inter-class similarities. Experimental results show that AAFFC achieves an accuracy of around 89 % for five-class classification tested on NIST 4 without rejection
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