Super-Resolution and Image Re-projection for Iris Recognition

E. Ribeiro, A. Uhl, F. Alonso-Fernandez
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引用次数: 1

Abstract

Several recent works have addressed the ability of deep learning to disclose rich, hierarchical and discriminative models for the most diverse purposes. Specifically in the super-resolution field, Convolutional Neural Networks (CNNs) using different deep learning approaches attempt to recover realistic texture and fine grained details from low resolution images. In this work we explore the viability of these approaches for iris Super-Resolution (SR) in an iris recognition environment. For this, we test different architectures with and without a so called image re-projection to reduce artifacts applying it to different iris databases to verify the viability of the different CNNs for iris super-resolution. Results show that CNNs and image re-projection can improve the results specially for the accuracy of recognition systems using a complete different training database performing the transfer learning successfully.
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虹膜识别的超分辨率和图像重投影
最近的一些工作已经解决了深度学习为最多样化的目的揭示丰富、分层和判别模型的能力。特别是在超分辨率领域,卷积神经网络(cnn)使用不同的深度学习方法试图从低分辨率图像中恢复真实的纹理和细粒度细节。在这项工作中,我们探讨了这些方法在虹膜识别环境中用于虹膜超分辨率(SR)的可行性。为此,我们测试了不同的架构,使用和不使用所谓的图像重投影来减少伪影,将其应用于不同的虹膜数据库,以验证不同cnn对虹膜超分辨率的可行性。结果表明,cnn和图像重投影可以提高结果的准确性,特别是在使用完全不同的训练数据库进行迁移学习的识别系统中。
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