Image Super Resolution Using Deep Learning

Nguyen-Phan-Long Le, Hung Ngoc Do, V. Huynh, Linh Mai
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Abstract

Image upscaling has been applied in many applications in the image processing field. This paper shows a model which is able to perform image upscaling by 4 times using a series of convolutional filters and trained using the generative adversarial network (GAN) training scheme. The GAN training process involves a generator network, which will perform the image upscaling. The results of the generator network will be evaluated by a discriminator network for the realistic score which will be feedback to the generator network for training. The chosen GAN type is the GAN with a relativistic discriminator which calculates how realistic is the generated image compared to the real image. The network also utilizes different structures of dilated convolution filter, inception module and residue connection between the filters to enhance the feature extraction capability. The high-definition image dataset DIV2K is used for the training.
使用深度学习的图像超分辨率
图像上尺度在图像处理领域中有着广泛的应用。本文展示了一个使用一系列卷积滤波器并使用生成对抗网络(GAN)训练方案进行训练的模型,该模型能够将图像放大4倍。GAN训练过程涉及一个生成器网络,该网络将执行图像的升级。生成器网络的结果将被判别器网络评估为真实分数,该分数将反馈给生成器网络进行训练。所选择的GAN类型是具有相对论鉴别器的GAN,该鉴别器计算生成的图像与真实图像相比的逼真程度。该网络还利用不同结构的扩展卷积滤波器、初始模块和滤波器之间的残数连接来增强特征提取能力。使用高清图像数据集DIV2K进行训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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