Evaluation of Deep Learning Models for Ear Recognition Against Image Distortions

S. El-Naggar, T. Bourlai
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引用次数: 4

Abstract

Automated human authentication is becoming increasingly popular on a variety of daily activities, ranging from surveillance to commercial related applications. While there are many biometric modalities that can be used, ear recognition has earned its value if and when available to be captured. Ears demonstrate specific advantages over other competitors in an effort to identify cooperative and non-cooperative individuals in either controlled or challenging environments. The performance of ear recognition systems can be impacted by several factors, including standoff distance, ear pose angle, and ear image quality. While all three factors can degrade ear recognition performance, here we focus on the latter two using real data, and assess the standoff distance factor by synthetically generating blurry and noisy images to simulate longer distance ear images. Thus, in this work we are inspired by various studies in the literature that discuss the how and why challenging biometric images of different modalities impact the associated biometric system recognition. Specifically, we focus on how different ear image distortions and yaw pose angles affect the performance of various deep learning based ear recognition models. Our contributions are threefold. Firstly, we are using challenging ear dataset, with a wide range of yaw pose angles, to evaluate the ear recognition performance of various original ear matching approaches. Secondly, by examining multiple convolutional neural network (CNN) architectures and employing multiple techniques for the learning process, we determine the most efficient CNN - based ear recognition approach. Thirdly, we investigated the impact on performance of a set of ear recognition CNN models in the presence of multiple image degradation factors, including variations of blurriness, additive noise, brightness and contrast.
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针对图像失真的深度学习耳识别模型评价
从监控到商业相关应用,自动化人工身份验证在各种日常活动中越来越受欢迎。虽然有许多生物识别模式可以使用,耳朵识别已经赢得了它的价值,如果和当可以捕获。耳朵在控制或挑战环境中识别合作和非合作个体方面,比其他竞争对手表现出特殊的优势。耳朵识别系统的性能会受到几个因素的影响,包括距离、耳朵姿态角度和耳朵图像质量。虽然这三个因素都会降低耳朵识别的性能,但在这里,我们将重点关注后两个因素,并通过综合生成模糊和噪声图像来模拟更远距离的耳朵图像来评估距离因素。因此,在这项工作中,我们受到文献中各种研究的启发,这些研究讨论了不同模式的挑战性生物识别图像如何以及为什么会影响相关的生物识别系统识别。具体来说,我们关注不同的耳朵图像失真和偏航姿态角度如何影响各种基于深度学习的耳朵识别模型的性能。我们的贡献是三重的。首先,我们使用具有广泛偏航姿态角度的挑战性耳朵数据集来评估各种原始耳朵匹配方法的耳朵识别性能。其次,通过研究多个卷积神经网络(CNN)架构,并在学习过程中采用多种技术,我们确定了最有效的基于CNN的耳朵识别方法。第三,我们研究了一组耳朵识别CNN模型在多种图像退化因素(包括模糊度、加性噪声、亮度和对比度的变化)存在下对性能的影响。
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