Improved Network for Face Recognition Based on Feature Super Resolution Method

被引:0
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作者
Ling-Yi Xu
Zoran Gajic
机构
[1] DepartmentofElectrical&ComputerEngineering,Rutgers,TheStateUniversityofNewJersey
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摘要
Low-resolution face images can be found in many practical applications. For example, faces captured from surveillance videos are typically in small sizes. Existing face recognition deep networks, trained on high-resolution images, perform poorly in recognizing low-resolution faces. In this work, an improved multi-branch network is proposed by combining ResNet and feature super-resolution modules. ResNet is for recognizing high-resolution facial images and extracting features from both high-and low-resolution images.Feature super-resolution modules are inserted before the classifier of ResNet for low-resolution facial images. They are used to increase feature resolution. The proposed method is effective and simple. Experimental results show that the recognition accuracy for high-resolution face images is high, and the recognition accuracy for low-resolution face images is improved.
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页码:915 / 925
页数:11
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