基于EDTV模型的自适应隐指纹图像分割与匹配

Shadi M. S. Hilles, A. Liban, A. Altrad, Othman A. M. Miaikil, Y. El-Ebiary, Jennifer O. Contreras, Mohanad M. Hilles
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引用次数: 1

摘要

人脸、指纹、虹膜、声音和掌纹等生物特征是应用最广泛的,而指纹是最常用的生物特征之一,用于识别个人和验证其身份。通常分为三种不同的类型,即卷指纹、普通指纹和潜指纹。潜在指纹图像分割的难点主要在于指纹图案质量差以及背景中存在噪声。本研究研究了基于EDTV的指纹分割与匹配,提出了Chan-vese主动轮廓分割技术。提出了国家标准技术研究院标准的潜在指纹灰度数据集NIST SD27,其中数据集包含多种指纹图像样本,共约258个潜在指纹,这些样本从犯罪现场采集并匹配指纹,并显示了匹配精度ROC和CMC曲线的性能,为了评估匹配ROC和CMC曲线的性能,已经部署。图像表现良好的ROC曲线下面积(AUC)为72%,其中CMC一级鉴别率为42%,一级鉴别率为79%。结果表明,隐指纹识别方法对好的隐指纹图像的性能优于对差和丑的隐指纹图像的性能,而对差和丑的隐指纹图像的性能差别不大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Latent Fingerprint Image Segmentation and Matching using Chan-Vese Technique Based on EDTV Model
Biometrics such as face, fingerprint, iris, voice and palm prints are the most widely used, and as well the fingerprints are one of the most frequently used biometrics to identify individuals and authenticate their identity. commonly categorized into three different categories which are rolled, plain and latent fingerprints. The reliability of image segmentation for latent fingerprint which is used in criminal issues still challenges, The difficulty of latent fingerprint image segmentation mainly lies in the poor quality of fingerprint patterns and the presence of the noise in the background, This research has investigated the fingerprint segmentation and matching based on EDTV and presented Chan-vese active contour segmentation technique, in addition, presented NIST SD27 for grayscale dataset of latent fingerprint which is standard by National Institute of Standard and Technology, where is dataset have varieties of fingerprint image samples, a total about 258 of latent fingerprint, those samples collected from crime scenes and matching fingerprint and shown the performance of matching accuracy ROC and CMC curves, To evaluate the performance of the matching ROC and CMC curves has been deployed, The area under curve (AUC) of the ROC of the good images performance is 72% with CMC rank1-idnetification of 42% and rank-20 identification of 79%. the result shows that the latent fingerprint method performance is better for good latent fingerprint images compare to bad and ugly images, while there is no much difference for bad and ugly image.
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