In order to provide safety and security from fraudulent acts, it is necessary to use a reliable biometric identifier. Fingerprint is considered to be one of most effective biometric identifiers because of its universal characteristics. The recognition rate of identification/verification systems depends to a great extent on the quality of the fingerprint image. In a fingerprint recognition system, there are two main phases: 1) extraction of suitable features of fingerprints, and 2) fingerprint matching using those extracted features to find the correspondence and similarity between the fingerprint images. The low quality of fingerprint images provides false minutiae at the stage of feature extraction and reduces the recognition rate of minutiae-based fingerprint matching systems. Use of enhanced fingerprint images improves the recognition rate but at the expense of a substantially increased complexity. The objective of this research is to develop an efficient and cost-effective scheme for enhancing fingerprint images that can improve minutiae extraction rate as well as effectively improve the recognition rate of a minutiae-based fingerprint matching system.udIn the first part of this thesis, a novel low-complexity three-stage scheme for the enhancement of fingerprint images is developed. In the first stage of the scheme, a linear diffusion filter driven by an orientation field is designed to enhance the low-quality fingerprint image. The computational complexity is reduced by using a simple gradient-based method for estimating the orientation field and by using a small number of iterations. Although some of the broken ridges in the fingerprint image are partially connected after the first stage, this stage has a limitation of not being able to connect ridges broken with wide creases, and also not being able to recover ridges in the smeared regions. To overcome the shortcomings of the first stage, the fingerprint image obtained after the first-stage enhancement is passed through a compensation filter in the second stage. Although the broken ridges in the enhanced fingerprint image after the second stage are fully connected, the ridges affected by smears are only partially recovered. Hence, the output obtained from the second stage is passed through the third-stage enhancement, which has two phases: short-time Fourier transform (STFT) analysis and enhancement by an angular filter. In the first phase, a Gaussian spectral window is used in order to perform the STFT and this window helps to reduce the blocking effect in the enhanced image. In the second phase, the image obtained from the STFT is passed through an angular filter, which significantly improves the overall quality of the fingerprint image.udIn the second part of this thesis, the effectiveness and usefulness of the proposed enhancement scheme are examined in fingerprint feature extraction and matching for fingerprint recognition applications. For this purpose, a minutiae extraction algorithm is first applied to extract minutiae from fingerprint images and then a minutia-based matching algorithm is applied to the set of extracted minutiae using a hybrid shape and orientation descriptor in order to find similarity between a pair of fingerprints.udExtensive experiments are conducted throughout this thesis using a number of challenging benchmark databases chosen from FVC2000, FVC2002 and FVC2004. Simulation results demonstrate not only the effectiveness of the proposed enhancement scheme in improving the subjective and objective qualities of fingerprint images, but also a superior minutiae extraction rate and a recognition accuracy of the fingerprint images enhanced by the proposed scheme at a reduced computational complexity.ud
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机译:为了从欺诈行为中提供安全保障,必须使用可靠的生物识别符。由于其通用特性,指纹被认为是最有效的生物特征识别符之一。识别/验证系统的识别率在很大程度上取决于指纹图像的质量。在指纹识别系统中,有两个主要阶段:1)提取指纹的合适特征,以及2)使用那些提取的特征进行指纹匹配,以找到指纹图像之间的对应性和相似性。指纹图像的低质量在特征提取阶段提供了错误的细节,并降低了基于细节的指纹匹配系统的识别率。使用增强的指纹图像可以提高识别率,但要以大大增加复杂度为代价。这项研究的目的是开发一种有效且具有成本效益的增强指纹图像的方案,该方案可以提高小细节的提取率,并有效提高基于小细节的指纹匹配系统的识别率。 ud在本文的第一部分,开发了一种新颖的低复杂度三阶段增强指纹图像方案。在该方案的第一阶段,设计了一个由定向场驱动的线性扩散滤波器,以增强低质量的指纹图像。通过使用简单的基于梯度的方法来估计方向场并使用少量迭代,可以降低计算复杂性。尽管在第一阶段之后指纹图像中的一些破裂的脊部分地被连接,但是该阶段具有不能连接被宽折痕破裂的脊的限制,并且还不能恢复被涂抹区域中的脊的局限性。为了克服第一阶段的缺点,在第一阶段增强之后获得的指纹图像在第二阶段中通过补偿滤波器。尽管第二阶段后增强指纹图像中的断裂脊已完全连接,但受涂片影响的脊仅能部分恢复。因此,从第二阶段获得的输出将通过第三阶段增强,该增强具有两个阶段:短时傅立叶变换(STFT)分析和角度滤波器增强。在第一阶段,使用高斯光谱窗口以执行STFT,并且该窗口有助于减少增强图像中的阻挡效果。在第二阶段,将从STFT获得的图像通过角度滤镜,这可以显着提高指纹图像的整体质量。 ud在本文的第二部分中,研究了所提出的增强方案的有效性和实用性。用于指纹识别应用程序的指纹特征提取和匹配。为此,首先应用细节提取算法从指纹图像中提取细节,然后使用混合形状和方向描述符将基于细节的匹配算法应用于提取的细节集合,以找到一对指纹之间的相似性本文使用从FVC2000,FVC2002和FVC2004中选择的许多具有挑战性的基准数据库进行了广泛的实验。仿真结果不仅证明了所提出的增强方案在改善指纹图像的主观和客观质量上的有效性,而且还以较低的计算复杂度提高了所提出的方案的细微特征提取率和识别精度。 ud
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