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Deep joint super-resolution and feature mapping for low resolution face recognition

机译:低分辨率面部识别的深关节超分辨率和特征映射

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To improve the accuracy in low resolution face recognition, a method based on super-resolution joint feature mapping is proposed. Firstly, a two-branch convolutional neural network is designed to extract features of high and low resolution face images. A super-resolution enhanced network cascading feature extraction network is used for feature mapping of low resolution face images. In this way, the high frequency information of low resolution image can be reconstructed, and features are extracted. Secondly, a fusion loss method is utilized, in which the loss of cosine and the image reconstruction are weighted and fusioned to increase the cosine similarity between image features of different resolutions. Finally, the experimental results based on FERET dataset validate that the test accuracy of two-branch framework is up to 98.2%, 99.1%, 99.5% with resolutions of 20×20, 24×24, and 36×36 obtained by smooth downsampling. The proposed model outperforms up-to-date low resolution face recognition methods.
机译:为了提高低分辨率面部识别的准确性,提出了一种基于超分辨率关节特征映射的方法。首先,双分支卷积神经网络旨在提取高分辨率面部图像的特征。超分辨率增强网络级联特征提取网络用于低分辨率面部图像的特征映射。以这种方式,可以重建低分辨率图像的高频信息,提取特征。其次,利用融合损失方法,其中余弦损失和图像重建是加权的,并且融合以增加不同分辨率的图像特征之间的余弦相似性。最后,基于Feret DataSet的实验结果验证,双分支框架的测试精度高达98.2%,99.1%,99.5%,分辨率为20×20,24×24和36×36,通过平滑下采样。所提出的模型优于最新的低分辨率面部识别方法。

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