耳朵图像的年龄和性别分类

Dogucan Yaman, Fevziye Irem Eyiokur, N. Sezgin, H. K. Ekenel
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引用次数: 21

摘要

本文详细分析了从耳朵图像中提取软生物特征、年龄和性别的方法。虽然之前已经有一些利用耳朵图像进行性别分类的工作,但据我们所知,这项研究是第一次利用耳朵图像进行年龄分类。在研究中,我们利用几何特征和基于外观的特征来表示耳朵。所利用的几何特征基于8个人体测量标志,包括14个距离测量和2个面积计算。基于外观的方法采用深度卷积神经网络进行表示和分类。本文采用了著名的卷积神经网络模型AlexNet、VGG-16、GoogLeNet、SqueezeNet进行研究。他们已经在一个大规模的耳朵数据集上进行了微调,该数据集是由Multi-PIE面部数据集中的侧面和近侧面面部图像构建的。这样,我们就执行了域适应。更新后的模型在小规模目标耳朵数据集上再次进行了微调,该数据集仅包含约270张用于训练的耳朵图像。实验结果表明,基于外观的方法优于基于几何特征的方法。性别分类的准确率达到94%,年龄分类的准确率达到52%。这些结果表明,耳图像为年龄和性别分类提供了有用的线索,然而,年龄估计需要进一步的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Age and gender classification from ear images
In this paper, we present a detailed analysis on extracting soft biometrie traits, age and gender, from ear images. Although there have been a few previous work on gender classification using ear images, to the best of our knowledge, this study is the first work on age classification from ear images. In the study, we have utilized both geometric features and appearance-based features for ear representation. The utilized geometric features are based on eight anthropometric landmarks and consist of 14 distance measurements and two area calculations. The appearance-based methods employ deep convolutional neural networks for representation and classification. The well-known convolutional neural network models, namely, AlexNet, VGG-16, GoogLeNet, and SqueezeNet have been adopted for the study. They have been fine-tuned on a large-scale ear dataset that has been built from the profile and close-to-profile face images in the Multi-PIE face dataset. This way, we have performed a domain adaptation. The updated models have been fine-tuned once more time on the small-scale target ear dataset, which contains only around 270 ear images for training. According to the experimental results, appearance-based methods have been found to be superior to the methods based on geometric features. We have achieved 94% accuracy for gender classification, whereas 52% accuracy has been obtained for age classification. These results indicate that ear images provide useful cues for age and gender classification, however, further work is required for age estimation.
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