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Fingerprint image classification by local area analysis

机译:局域分析指纹图像分类

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This paper describes a new fingerprint classification algorithm based on the analysis of the local area in which singular point might exist and presents methods to eliminate false singular points made by noise. The algorithm detects singular point (core and delta) candidates roughly from 16x16 block-size directional image and analyzes the near area of each candidates from 8x8 block-size directional image. In this local area analysis, false singular point made by noise is eliminated and the precise core point and the type and the orientation informaiton of core point is extracted for the classification step. Using this information, classification is performed. The algorithm was tested on 11796 images and classification acuracy of 91.7
机译:本文介绍了一种新的指纹分类算法,其基于局部区域的分析,其中奇异点可能存在并呈现消除噪声制造的假奇异点的方法。该算法检测大致从16x16块尺寸方向图像的奇点(核心和Δ)候选,并分析来自8x8块尺寸方向图像的每个候选的近区域。在该局部区域分析中,消除了噪声制造的假奇异点,并且提取了对分类步骤的精确核心点和核心点的类型和方向信息。使用此信息,执行分类。该算法在11796图像和91.7的分类中进行了测试

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