基于梯度幅度的指纹方向场估计增强算法

Saparudin Saparudin, G. Sulong
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引用次数: 1

摘要

准确估计指纹方向场是指纹分类过程中的一个重要步骤。基于梯度的方法通常用于估计脊状结构的方向场,但这种方法容易受到噪声的影响。指纹图像的增强改善了脊谷结构,增加了正确特征的数量,从而提高了分类过程的整体性能。本文提出了一种利用梯度幅度来改进脊向纹理的算法。这个算法有四个步骤;首先对指纹图像进行归一化处理,其次进行前景提取,然后利用梯度相干性识别和标记噪声区域,最后进行灰度增强。我们使用标准指纹数据库NIST-DB14对算法进行了测试,验证了算法的效率程度。实验结果表明,与其他方法相比,增强算法的抗噪性能明显更好。
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Fingerprint Enhancement Algorithm Based-on Gradient Magnitude for the Estimation of Orientation Fields
An accurate estimation of fingerprint orientation fields is an important step in the fingerprint classification process. Gradient-based approaches are often used for estimating orientation fields of ridge structures but this method is susceptible to noise. Enhancement of fingerprint images improves the ridge-valley structure and increases the number of correct features thereby conducing the overall performance of the classification process. In this paper, we propose an algorithm to improve ridge orientation textures using gradient magnitude. That algorithm has four steps; firstly, normalization of fingerprint image, secondly, foreground extraction, thirdly, noise areas identification and marking using gradient coherence and finally, enhancement of grey level. We have used standard fingerprint database NIST-DB14 for testing of proposed algorithm to verify the degree of efficiency of algorithm. The experiment results suggest that our enhanced algorithm achieves visibly better noise resistance with other methods.
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