基于脊流模式的指纹快速分类算法

N. Nain, Bhavitavya Bhadviya, B. Gautham, D. Kumar, B. Deepak
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引用次数: 17

摘要

提出了一种利用脊流模式对指纹图像进行分类的新算法。在指纹验证系统(FVSs)中,与顺序搜索方法相比,指纹图像分类节省了时间,提高了准确性。在本文中,我们首先使用Sobel算子和Gabor滤波器提取了高脊曲率(HRC)区域。一旦区域被提取,区域内的脊在两个方向上被追踪,从脊上的任何点开始。在脊的端点处绘制矢量。在端点处绘制的向量能够确定指纹图像所属的类别。如果是一个螺旋,则从起点开始监测脊线的坐标,以确定类别。该算法消除了核心点检测,基于简单的脊流连通性,速度非常快。在Matlab上实现,无拒绝分类的总体准确率为98.75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Fingerprint Classification Algorithm by Tracing Ridge-Flow Patterns
We propose a novel algorithm to classify fingerprint images using the ridge flow patterns. In Fingerprint Verification Systems (FVSs), classification of the fingerprint images saves time and increases accuracy, as compared to the sequential search method. In this paper, we have first extracted the High Ridge Curvature (HRC) region using the Sobel operator and Gabor filter. Once the region is extracted, the ridges within the region are traced in both the directions, starting from any point on the ridge. Vectors are drawn at the end points of the ridge. The vectors drawn at the end points are able to determine the class to which a fingerprint image belongs. In case of a whorl, the co-ordinates of the ridges from the starting point are monitored in order to determine the class. The algorithm is very fast as it eliminates the core point detection, and is based on simple ridge-flow connectivity. The implementation was done on Matlab, and the overall accuracy of classification without rejection was 98.75%.
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