Domain Adaptation for Unconstrained Ear Recognition with Convolutional Neural Networks

Solange Ramos-Cooper, Guillermo Cámara Chávez
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引用次数: 3

Abstract

Ear recognition has gained attention within the biometrics community recently. Ear images can be captured from a distance without contact, and the explicit cooperation of the subject is not needed. In addition, ears do not suffer extreme change over time and are not affected by facial expressions. All these characteristics are convenient when implementing surveillance and security applications. At the same time, applying any Deep Learning (DL) algorithm usually demands large amounts of samples to train networks. Thus, we introduce a large-scale database and explore fine-tuning pre-trained Convolutional Neural Networks (CNN) to adapt ear domain images taken under uncontrolled conditions. We built an ear dataset from the VGGFace dataset by profiting the face recognition field. Moreover, according to our experiments, adapting the VGGFace model to the ear domain leads to a better performance than using a model trained on general image recognition. The efficiency of the trained models has been tested on the UERC dataset achieving a significant improvement of around 9\% compared to approaches in the literature. Additionally, a score-level fusion technique was explored by combining the matching scores of two models. This fusion resulted in an improvement of around 4\% more. Open-set and close-set experiments have been performed and evaluated using Rank-1 and Rank-5 recognition rate metrics
基于卷积神经网络的无约束耳识别领域自适应
耳朵识别最近在生物识别界引起了关注。耳朵图像可以在没有接触的情况下从远处捕获,并且不需要受试者的明确合作。此外,耳朵不会随着时间的推移而发生极端变化,也不会受到面部表情的影响。所有这些特点都为实现监控和安全应用提供了方便。同时,应用任何深度学习(DL)算法通常需要大量的样本来训练网络。因此,我们引入了一个大规模的数据库,并探索微调预训练卷积神经网络(CNN)来适应在非受控条件下拍摄的耳域图像。利用人脸识别领域,从VGGFace数据集构建耳朵数据集。此外,根据我们的实验,将VGGFace模型应用于耳域比使用一般图像识别训练的模型具有更好的性能。训练模型的效率已经在UERC数据集上进行了测试,与文献中的方法相比,显著提高了9%左右。此外,通过结合两个模型的匹配分数,探索了分数级融合技术。这种融合导致了大约4%的改进。使用Rank-1和Rank-5识别率指标进行了开集和闭集实验并进行了评估
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