Graph based K-nearest neighbor minutiae clustering for fingerprint recognition

Vaishali S. Pawar, M. Zaveri
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引用次数: 10

Abstract

The graph is an efficient data structure to represent multi-dimensional data and their complex relations. Pattern matching and data mining are the two important fields of computer science. Pattern matching finds a particular pattern in the given input where as data mining deals with selecting specific data from the huge databases. This work contributes towards the combination of graph theory, pattern recognition and graph based databases. A variety of graph based techniques have been proposed as a powerful tool for pattern representation and classification in the past years. For a longer time graphs remained computationally expensive tool. But recently the graph based structural pattern recognition and image processing is becoming popular. The computational complexity of the graph based methods is becoming feasible due to high end new generations of the computers and the research advancements. In this work we have implemented graph based fingerprint recognition algorithm. The fingerprints are represented as attributed relational graphs. In the pattern recognition phase graph matching is applied. This study focuses on the clustering of graph databases prior to graph matching. When the structural feature set size of the data grows longer, graph matching becomes expensive. The clustering of graph databases drastically reduce the graph matching candidates.
基于图的k近邻聚类指纹识别
图是表示多维数据及其复杂关系的有效数据结构。模式匹配和数据挖掘是计算机科学的两个重要领域。模式匹配在给定的输入中找到一个特定的模式,而数据挖掘则是从庞大的数据库中选择特定的数据。这项工作有助于图论、模式识别和基于图的数据库的结合。在过去的几年里,各种基于图的技术被提出作为模式表示和分类的强大工具。在很长一段时间里,图仍然是计算成本很高的工具。但近年来,基于图的结构模式识别和图像处理越来越受欢迎。由于新一代的高端计算机和研究的进步,基于图的方法的计算复杂度正在变得可行。本文实现了基于图形的指纹识别算法。指纹被表示为带有属性的关系图。在模式识别中应用了相图匹配。本研究的重点是在图匹配之前对图数据库进行聚类。当数据的结构特征集越来越大时,图匹配的代价会越来越大。图数据库的聚类极大地减少了图匹配候选者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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