Learning guided convolutional neural networks for cross-resolution face recognition

Tzu-Chien Fu, Wei-Chen Chiu, Y. Wang
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引用次数: 13

Abstract

Cross-resolution face recognition tackles the problem of matching face images with different resolutions. Although state-of-the-art convolutional neural network (CNN) based methods have reported promising performances on standard face recognition problems, such models cannot sufficiently describe images with resolution different from those seen during training, and thus cannot solve the above task accordingly. In this paper, we propose Guided Convolutional Neural Network (Guided-CNN), which is a novel CNN architecture with parallel sub-CNN models as guide and learners. Unique loss functions are introduced, which would serve as joint supervision for images within and across resolutions. Our experiments not only verify the use of our model for cross-resolution recognition, but also its applicability of recognizing face images with different degrees of occlusion.
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学习引导卷积神经网络用于交叉分辨率人脸识别
交叉分辨率人脸识别解决的是不同分辨率人脸图像的匹配问题。尽管基于卷积神经网络(CNN)的最先进的方法在标准人脸识别问题上有很好的表现,但这些模型不能充分描述与训练中看到的分辨率不同的图像,因此无法解决上述任务。本文提出了一种以并行子CNN模型作为引导和学习器的新型CNN结构——Guided-CNN。引入了独特的损失函数,作为分辨率内和跨分辨率图像的联合监督。我们的实验不仅验证了我们的模型在交叉分辨率识别中的应用,而且验证了它在识别不同程度遮挡的人脸图像中的适用性。
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