基于手热图像的无约束生物特征识别

Ewelina Bartuzi, Katarzyna Roszczewska, A. Czajka, A. Pacut
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引用次数: 8

摘要

本文提出了一种基于手部内部热图像的生物特征识别方法,并利用专业热像仪采集了70名受试者的2.1万张双手热图像数据库。每个受试者的数据是在三个不同的会议中获得的,前两个会议在同一天组织,第三个会议相隔大约两周组织。这样就可以分析手部温度在短期和长期的稳定性。在采集过程中没有使用手动稳定或定位设备,使该设置更接近现实世界,不受约束的应用。这需要使我们的方法具有平移、旋转和缩放不变性。提出并比较了两种特征选择和分类方法:采用纹理描述符(如二值化统计图像特征(BSIF)和Gabor小波)的特征工程,以及基于不同环境条件下训练的卷积神经网络(CNN)的特征学习。对于会话内场景,我们在第一种和第二种方法中分别实现了0.36%和0.00%的相等错误率(EER)。第一种方法的session间EER为27.98%,第二种方法为17.17%。这些结果可以估计手部热信息的短期稳定性。本文提出了目前已知的第一个手部热图像数据库和第一个完全基于无约束场景下热传感器获取的手部热图的生物识别系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unconstrained Biometric Recognition based on Thermal Hand Images
This paper proposes a biometric recognition method based on thermal images of inner part of the hand, and a database of 21,000 thermal images of both hands acquired by a specialized thermal camera from 70 subjects. The data for each subject was acquired in three different sessions, with two first sessions organized on the same day, and the third session organized approximately two weeks apart. This allowed to analyze the stability of hand temperature in both short-term and long-term horizons. No hand stabilization or positioning devices were used during acquisition, making this setup closer to real-world, unconstrained applications. This required making our method translation-, rotationand scale-invariant. Two approaches for feature selection and classification are proposed and compared: feature engineering deploying texture descriptors such as Binarized Statistical Image Features (BSIF) and Gabor wavelets, and feature learning based on convolutional neural networks (CNN) trained in different environmental conditions. For within-session scenario we achieved 0.36% and 0.00% of equal error rate (EER) in the first and the second approach, respectively. Between-session EER stands at 27.98% for the first approach and 17.17% for the second one. These results allow for estimation of a short-term stability of hand thermal information. This paper presents the first known to us database of hand thermal images and the first biometric system based solely on hand thermal maps acquired by thermal sensor in unconstrained scenario.
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