严重姿态变形下的非接触式指关节认证

Ajay Kumar
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引用次数: 3

摘要

使用指关节图像的非接触式生物识别技术在电子商务和法医应用中显示出巨大的潜力。准确匹配真实世界非接触式手指关节图像的关键挑战之一是由于手指姿势变化而不由自主地产生的指关节模式变形。因此,该领域的早期工作获取了固定姿势的手指图像进行身份验证,因此从这些图像获得的性能不能反映部署场景下的预期性能。本文采用了一种新的方法来精确匹配这些指关节图像,并首次尝试了在剧烈姿势变化下指关节模式的验证。这种方法试图通过识别两个匹配图像之间固定数量的选择点之间的对应关系来纠正姿势相关的变形。在每个对应点使用局部特征描述符计算匹配分数,并合并生成平均匹配分数。本文采用221个不同受试者的双节和单节食指指关节图像,利用公开的数据库进行了实验。这些结果表明,使用固定数量的对应点来匹配变形手指关节图像的空域方法具有优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contactless Finger Knuckle Authentication under Severe Pose Deformations
Contactless biometrics identification using finger knuckle images has shown significant potential for the e-business and forensic applications. One of the key challenges in accurately matching the real-world contactless finger knuckle images is related to the knuckle pattern deformations that are involuntarily generated due to finger pose changes. Earlier work in this area therefore acquired fixed pose finger images for the authentication and therefore the performance achieved from such images cannot reflect the expected performance under the deployment scenarios. This paper adopts a new approach to accurately match such finger knuckle images and presents first attempt to authenticate finger-knuckle patterns under severe pose changes. This approach attempts to correct pose related deformations by identifying the correspondence between a fixed number of chosen points between two matched images. The match score is computed using local feature descriptors, at each of these correspondence points, and consolidated to generate average match score. The experimental results are presented in this paper, both using two-session and single-session index finger knuckle images from 221 different subjects, using publicly available database. These results are outperforming and indicate the merit of spatial-domain approach to match deformed finger knuckle images using a fixed number of correspondence points.
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