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Two-Stage Enhancement Scheme for Low-Quality Fingerprint Images by Learning From the Images

机译:从图像中学习低质量指纹图像的两阶段增强方案

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摘要

Fingerprint authentication for content protection in the human–machine systems, cybernetics, and computational intelligence is very popular. Because of the complex input contexts, low-quality input fingerprint images always exist with cracks and scars, dry skin, or poor ridges and valley contrast ridges. Usually, fingerprint images are enhanced by one stage in either the spatial or the frequency domain. However, the enhanced performances are not satisfactory because of the complicated ridge structures that are affected by unusual input contexts. In this paper, we propose a novel and effective two-stage enhancement scheme in both the spatial domain and the frequency domain by learning from the underlying images. To remedy the ridge areas and enhance the contrast of the local ridges, we first enhance the fingerprint image in the spatial domain with a spatial ridge-compensation filter by learning from the images. With the help of the first step, the second-stage filter, i.e., a frequency bandpass filter that is separable in the radial- and angular-frequency domains, is employed. It is noted that the parameters of the bandpass filters are learnt from both the original image and the first-stage enhanced image instead of acquiring from the original image solely. It enhances the fingerprint image significantly because of the fast and sharp attenuation of the filter in both the radial and the angular-frequency domains. Experimental results show that our proposed algorithm is able to handle various input image contexts and achieves better results compared with some state-of-the-art algorithms over public databases, and to improve the performances of fingerprint-authentication systems.
机译:在人机系统,控制论和计算智能中,用于内容保护的指纹认证非常流行。由于复杂的输入环境,低质量的输入指纹图像始终存在裂缝和疤痕,皮肤干燥,或脊部和谷底对比度低的脊部。通常,指纹图像在空间或频域中被增强一级。但是,由于复杂的脊结构受到异常输入上下文的影响,因此增强的性能并不令人满意。在本文中,我们通过从基础图像中学习,提出了一种在空间域和频率域上新颖且有效的两阶段增强方案。为了补救脊区域并增强局部脊的对比度,我们首先通过学习图像来使用空间脊补偿滤波器来增强空间域中的指纹图像。在第一步的帮助下,采用了第二级滤波器,即在径向和角频域中可分离的频带通滤波器。注意,从原始图像和第一阶段增强图像两者中学习带通滤波器的参数,而不是仅从原始图像中获取带通滤波器的参数。由于滤波器在径向和角频率域中都快速而急剧地衰减,因此可以显着增强指纹图像。实验结果表明,与公共数据库中的某些最新算法相比,我们提出的算法能够处理各种输入图像上下文,并取得更好的结果,并提高了指纹认证系统的性能。

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