Experimental Evaluation of Covariates Effects on Periocular Biometrics: A Robust Security Assessment Framework

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Journal of Data and Information Quality Pub Date : 2023-01-30 DOI:10.1145/3579029
Gautam Kumar, Sambit Bakshi, A. K. Sangaiah, Pankaj Kumar Sa
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Abstract

The growing integration of technology into our lives has resulted in unprecedented amounts of data that are being exchanged among devices in an Internet of Things (IoT) environment. Authentication, identification, and device heterogeneities are major security and privacy concerns in IoT. One of the most effective solutions to avoid unauthorized access to sensitive information is biometrics. Deep learning-based biometric systems have been proven to outperform traditional image processing and machine learning techniques. However, the image quality covariates associated with blur, resolution, illumination, and noise predominantly affect recognition performance. Therefore, assessing the robustness of the developed solution is another important concern that still needs to be investigated. This article proposes a periocular region-based biometric system and explores the effect of image quality covariates (artifacts) on the performance of periocular recognition. To simulate the real-time scenarios and understand the consequences of blur, resolution, and bit-depth of images on the recognition accuracy of periocular biometrics, we modeled out-of-focus blur, camera shake blur, low-resolution, and low bit-depth image acquisition using Gaussian function, linear motion, interpolation, and bit plan slicing, respectively. All the images of the UBIRIS.v1 database are degraded by varying strength of image quality covariates to obtain degraded versions of the database. Afterward, deep models are trained with each degraded version of the database. The performance of the model is evaluated by measuring statistical parameters calculated from a confusion matrix. Experimental results show that among all types of covariates, camera shake blur has less effect on the recognition performance, while out-of-focus blur significantly impacts it. Irrespective of image quality, the convolutional neural network produces excellent results, which proves the robustness of the developed model.
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眼周生物特征协变量效应的实验评估:一个稳健的安全性评估框架
科技日益融入我们的生活,导致在物联网(IoT)环境中,设备之间交换的数据量前所未有。身份验证、身份识别和设备异构是物联网中主要的安全和隐私问题。避免未经授权访问敏感信息的最有效解决方案之一是生物识别技术。基于深度学习的生物识别系统已被证明优于传统的图像处理和机器学习技术。然而,图像质量协变量相关的模糊,分辨率,照明和噪声主要影响识别性能。因此,评估开发的解决方案的健壮性是另一个需要研究的重要问题。本文提出了一种基于眼周区域的生物识别系统,并探讨了图像质量协变量(伪影)对眼周识别性能的影响。为了模拟实时场景,了解图像的模糊、分辨率和位深对眼周生物特征识别精度的影响,我们分别使用高斯函数、线性运动、插值和位计划切片对失焦模糊、相机抖动模糊、低分辨率和低位深图像采集进行了建模。所有UBIRIS的图像。通过改变图像质量协变量的强度对V1数据库进行降级,得到降级版本的数据库。然后,使用数据库的每个降级版本对深度模型进行训练。通过测量由混淆矩阵计算的统计参数来评估模型的性能。实验结果表明,在所有类型的协变量中,相机抖动模糊对识别性能的影响较小,而失焦模糊对识别性能的影响较大。在不考虑图像质量的情况下,卷积神经网络得到了很好的结果,证明了所建模型的鲁棒性。
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来源期刊
ACM Journal of Data and Information Quality
ACM Journal of Data and Information Quality COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.10
自引率
4.80%
发文量
0
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