基于vgg -19自适应损失函数的srgan面部图像超分辨率与特征重建

H. S. Shashank, Aniruddh Acharya, E. Sivaraman
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引用次数: 1

摘要

图像重建和超分辨率有各种各样的应用。一些深度学习技术正在被用来不断改进这个领域。本实验的目的是展示一种独特的深度学习方法,尝试从低分辨率图像中超分辨率地识别人脸。该实验使用了一种旨在提高图像质量的机器学习框架,称为超分辨率生成对抗神经网络(SRGANs),其损失函数基于从称为视觉几何组19 (VGG-19)的训练卷积神经网络的多层累积的特征。该模型可以超分辨率低质量的图像输入,并给出高质量的图像输出
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Facial Image Super Resolution and Feature Reconstruction using SRGANs with VGG-19-based Adaptive Loss Function
Image reconstruction and super resolution has various applications. Several deep learning techniques are being employed to constantly improve this space. The aim of this experiment is to showcase a unique deep learning approach to try and super resolve human faces from low resolution images. The experiment makes use of a machine learning framework designed to improve image quality called Super Resolution Generative Adversarial Neural (SRGANs) with a loss function based on the features accumulated from multiple layers of a trained Convolutional Neural Network named Visual Geometry Group-19 (VGG-19). The model super resolves lower quality image input and gives out image output of a superior quality
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