基于丢失细节重建的方向性全变分模型的潜在指纹增强

A. Liban, Shadi M. S. Hilles
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引用次数: 0

摘要

图像增强在生物识别系统中起着重要作用,本文提出了潜指纹的自动分割与匹配。虽然在滚动指纹和普通指纹图像增强方面都取得了相当大的进展,但由于潜在指纹的图像质量较差,脊结构不清楚,图案重叠多样,并且存在结构化噪声,因此潜在指纹增强是一个具有挑战性的问题。在潜指纹分割和特征提取之前,潜指纹图像增强对于抑制各种类型的噪声和澄清脊结构是重要的。本文综述了目前用于潜在指纹增强的技术,并提出了一种将边缘方向全变分模型(EDTV)和质量图像增强与丢失细节重建相结合的混合模型。NIST SD27数据库用于测试所提出的RMSE和PSNR技术的性能。该技术能有效地对输入的潜指纹图像进行澄清,消除好、坏、丑潜指纹图像中的噪声。统计上的显著差异集中在不同类别的潜在指纹、图像(好、坏和丑)的PSNR和RMSE的平均长度上。与糟糕和丑陋的图像相比,所提出的技术对于良好的潜在指纹图像表现良好。对于好的、坏的和难看的图像SD27图像集,增强分别呈现0.018373、0.022287和0.023199的RMSE平均值,而对于PSNR,增强分别为82.99068、81.39749和81.07826。所提出的增强技术将潜在指纹图像的匹配精度提高了约30%。
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Latent Fingerprint Enhancement Based on Directional Total Variation Model with Lost Minutia Reconstruction
Image enhancement plays an important role in biometric systems, this paper presented automatic latent fingerprint segmentation and matching. While considerable progress has made in both rolled and plain fingerprint image enhancement, latent fingerprint enhancement is a challenging problem due to the poor image quality of latent fingerprint with unclear ridge structures and various overlapping patterns, along with the presence of structured noise. Prior to latent fingerprint segmentation and feature extraction, latent fingerprint image enhancement is important to suppress various types of noise and to clarify the ridge structure. This paper reviews the current techniques used for latent fingerprint enhancement and presents a hybrid model which combines the edge directional total variation model (EDTV) and quality image enhancement with lost minutia reconstruction. The NIST SD27 database is used to test the performance of the proposed techniques with RMSE and PSNR. The proposed technique is effectively clarify input latent fingerprint images and eliminate noise in good, bad and ugly latent fingerprint images. A statistically significant difference, which focused on the mean lengths of PSNR and RMSE for different categories of latent fingerprint, images (good, bad and ugly). The proposed technique performs well for the good latent fingerprint images compare to bad and ugly images. Enhancement respectively presents RMSE averages of 0.018373, 0.022287, and 0.023199 for the good, bad and ugly image SD27 image set, as opposed to 82.99068, 81.39749, and 81.07826 for PSNR. The proposed enhancement technique improved the matching accuracy of latent fingerprint images by about 30%.
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来源期刊
International Journal of Automation and Smart Technology
International Journal of Automation and Smart Technology Engineering-Electrical and Electronic Engineering
CiteScore
0.70
自引率
0.00%
发文量
0
审稿时长
16 weeks
期刊介绍: International Journal of Automation and Smart Technology (AUSMT) is a peer-reviewed, open-access journal devoted to publishing research papers in the fields of automation and smart technology. Currently, the journal is abstracted in Scopus, INSPEC and DOAJ (Directory of Open Access Journals). The research areas of the journal include but are not limited to the fields of mechatronics, automation, ambient Intelligence, sensor networks, human-computer interfaces, and robotics. These technologies should be developed with the major purpose to increase the quality of life as well as to work towards environmental, economic and social sustainability for future generations. AUSMT endeavors to provide a worldwide forum for the dynamic exchange of ideas and findings from research of different disciplines from around the world. Also, AUSMT actively seeks to encourage interaction and cooperation between academia and industry along the fields of automation and smart technology. For the aforementioned purposes, AUSMT maps out 5 areas of interests. Each of them represents a pillar for better future life: - Intelligent Automation Technology. - Ambient Intelligence, Context Awareness, and Sensor Networks. - Human-Computer Interface. - Optomechatronic Modules and Systems. - Robotics, Intelligent Devices and Systems.
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