增强深度学习在人脸识别方面的性能

Ze Lu, Xudong Jiang, A. Kot
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引用次数: 21

摘要

基于深度卷积神经网络(cnn)的人脸识别方法一直在该领域占据主导地位。cnn的成功归功于其学习丰富图像表示的能力。但是训练cnn依赖于估计数以百万计的参数,并且需要非常大量的带注释的训练图像。一种广泛使用的替代方法是对使用大量标记图像进行预训练的CNN进行微调。然而,我们表明,当训练数据集和测试数据集差异较大时,微调预训练的cnn不能提供令人满意的人脸识别性能。为了解决这个问题,我们提出通过使用非cnn特征来提高cnn的人脸识别性能。使用预训练的CNN模型VGG-Face在LFW和FRGC数据库上进行了大量的实验。结果表明,非cnn特征中包含的互补信息大大提高了cnn在LFW和FRGC数据库上的人脸验证率/准确率。此外,我们表明非cnn特征在增强预训练cnn的性能方面比微调更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhance deep learning performance in face recognition
Deep convolutional neural networks (CNNs) based face recognition approaches have been dominating the field. The success of CNNs is attributed to their ability to learn rich image representations. But training CNNs relies on estimating millions of parameters and requires a very large number of annotated training images. A widely-used alternative is to fine-tune the CNN that has been pre-trained using a large set of labeled images. However, we show that fine-tuning pre-trained CNNs cannot provide satisfactory face recognition performance when training and testing datasets have large differences. To address this problem, we propose to improve the face recognition performance of CNNs by using non-CNN features. Extensive experiments are conducted on LFW and FRGC databases using the pre-trained CNN model, VGG-Face. Results show that the complementary information contained in non-CNN features greatly improves the face verification rate/accuracy of CNNs on LFW and FRGC databases. Furthermore, we show that non-CNN features are more effective in enhancing the performance of pre-trained CNNs than fine-tuning.
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