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Research on Image Super-resolution Reconstruction Based on Deep Learning Cover

Research on Image Super-resolution Reconstruction Based on Deep Learning

By: Jingyu Jiang,  Li Zhao and  Yan Jiao  
Open Access
|May 2023

Figures & Tables

Figure 1.

Super-resolution method based on deep learning
Super-resolution method based on deep learning

Figure 2.

SRCNN network model
SRCNN network model

Figure 3.

VDSR network structure
VDSR network structure

Figure 4.

Schematic diagram of the basic structure of SRGAN
Schematic diagram of the basic structure of SRGAN

图 1

基于深度学习的超分辨率方法
基于深度学习的超分辨率方法

图 2

SRCNN 网络模型
SRCNN 网络模型

图 3

VDSR 网络结构
VDSR 网络结构

图 4

SRGAN 基本结构示意图
SRGAN 基本结构示意图

Introduction to commonly used data sets

Data set nameNumber of picturesImage FormatBrief description of the data set
Set5[24]5PNGThe pictures included are from babies, birds, butterflies, children's heads, and a lady.
Set14[25]14PNGThe included pictures come from characters, animals, insects, flowers, vegetables, comedians, etc.
Berkeley segmentation[26]500JPGReferred to as BSD500. The pictures included are from animals, buildings, food, people and plants, etc. One of the 100 or 300 pictures is often used, which is called the BSD100 BSD300 data set.
Urban100[27]100PNGThe pictures included are mainly different types of urban buildings.
Manga109[28]109PNGThe pictures included are all from Japanese manga.
T91[29]91PNGThe included pictures come from vehicles, flowers, fruits and human faces. Often used as a training set.
General-100[30]100BMPThe pictures included are from animals, daily necessities, food, plants, people, etc. It is also often used as a training set.
DIV2K[23]1000PNGA dataset of high-definition pictures, with pictures from natural environments, landscapes, handicrafts and people, etc. Among them, 800 pictures are often used as training sets.
Flickr2K[15]2650PNGThe included pictures come from people, animals, landscapes, etc., and are often used as larger training sets.

常用数据集介绍

数据集名称图片数量图片格式数据集简单描述
Set5[24]5PNG包含的图片分别来自婴儿、鸟、蝴蝶、小孩的头部和一个女士。
Set14[25]14PNG包含的图片来自人物、动物、昆虫、花、蔬菜和喜剧演员等。
Berkeley segmentation[26]500JPG简称 BSD500。包含的图片来自动物、建筑、食物、人和 植物等。经常使用其中的 100 张或 300 张图片,称为 BSD100 BSD300 数据集。
Urban100[27]100PNG包含的图片主要是不同类型的城市建筑物。
Manga109[28]109PNG包含的图片均来自日本漫画。
T91[29]91PNG包含的图片来自车辆、花、水果和人脸等。常被用作训练集。
General-100[30]100BMP包含的图片来自动物、日常用品、食物、植物和人物等。 也常用作训练集。
DIV2K[23]1000PNG高清图片数据集,图片来自自然环境、风景、手工艺品和 人物等。其中的 800 张图片经常作为训练集使用。
Flickr2K[15]2650PNG包含的图片来自人物、动物和风景等,常作为较大规模训 练集使用。
Language: English
Page range: 1 - 21
Published on: May 28, 2023
Published by: Xi’an Technological University
In partnership with: Paradigm Publishing Services
Publication frequency: 4 issues per year

© 2023 Jingyu Jiang, Li Zhao, Yan Jiao, published by Xi’an Technological University
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.