Multi-Category Image Super-Resolution with Convolutional Neural Network and Multi-Task Learning

被引:3
|
作者
Urazoe, Kazuya [1 ,3 ]
Kuroki, Nobutaka [1 ]
Kato, Yu [1 ,4 ]
Ohtani, Shinya [1 ,5 ]
Hirose, Tetsuya [2 ]
Numa, Masahiro [1 ]
机构
[1] Kobe Univ, Grad Sch Engn, Kobe, Hyogo 6578501, Japan
[2] Osaka Univ, Grad Sch Engn, Suita, Osaka 5650871, Japan
[3] Panasonic Corp, Osaka, Japan
[4] EIZO Corp, Haku San, Japan
[5] Toyota Motor Co Ltd, Tokyo, Japan
关键词
super-resolution; resolution enhancement; convolutional neural network; multi-task learning; deep learning;
D O I
10.1587/transinf.2020EDP7054
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This paper presents an image super-resolution technique using a convolutional neural network (CNN) and multi-task learning for multiple image categories. The image categories include natural, manga, and text images. Their features differ from each other. However, several CNNs for super-resolution are trained with a single category. If the input image category is different from that of the training images, the performance of super-resolution is degraded. There are two possible solutions to manage multi-categories with conventional CNNs. The first involves the preparation of the CNNs for every category. This solution, however, requires a category classifier to select an appropriate CNN. The second is to learn all categories with a single CNN. In this solution, the CNN cannot optimize its internal behavior for each category. Therefore, this paper presents a super-resolution CNN architecture for multiple image categories. The proposed CNN has two parallel outputs for a high-resolution image and a category label. The main CNN for the high-resolution image is a normal three convolutional layer-architecture, and the sub neural network for the category label is branched out from its middle layer and consists of two fully-connected layers. This architecture can simultaneously learn the high-resolution image and its category using multi-task learning. The category information is used for optimizing the super-resolution. In an applied setting, the proposed CNN can automatically estimate the input image category and change the internal behavior. Experimental results of 2x image magnification have shown that the average peak signal-to-noise ratio for the proposed method is approximately 0.22 dB higher than that for the conventional super-resolution with no difference in processing time and parameters. We have ensured that the proposed method is useful when the input image category is varying.
引用
收藏
页码:183 / 193
页数:11
相关论文
共 50 条
  • [21] Single Image Super-Resolution Based on Multi-Scale Competitive Convolutional Neural Network
    Du, Xiaofeng
    Qu, Xiaobo
    He, Yifan
    Guo, Di
    SENSORS, 2018, 18 (03)
  • [22] Remote Sensing Image Super-Resolution using Multi-Scale Convolutional Neural Network
    Qin, Xing
    Gao, Xiaoqi
    Yue, Keqiang
    2018 11TH UK-EUROPE-CHINA WORKSHOP ON MILLIMETER WAVES AND TERAHERTZ TECHNOLOGIES (UCMMT2018), VOL 1, 2018,
  • [23] Single Image Super-Resolution via Multi-Scale Fusion Convolutional Neural Network
    Du, Xiaofeng
    He, Yifan
    Li, Jianmi
    Xie, Xiaozhu
    2017 IEEE 8TH INTERNATIONAL CONFERENCE ON AWARENESS SCIENCE AND TECHNOLOGY (ICAST), 2017, : 544 - 551
  • [24] Image Fusion and Super-Resolution with Convolutional Neural Network
    Zhong, Jinying
    Yang, Bin
    Li, Yuehua
    Zhong, Fei
    Chen, Zhongze
    PATTERN RECOGNITION (CCPR 2016), PT II, 2016, 663 : 78 - 88
  • [25] Image Super-Resolution With Deep Convolutional Neural Network
    Ji, Xiancai
    Lu, Yao
    Guo, Li
    2016 IEEE FIRST INTERNATIONAL CONFERENCE ON DATA SCIENCE IN CYBERSPACE (DSC 2016), 2016, : 626 - 630
  • [26] Convolutional Neural Network for Smoke Image Super-Resolution
    Liu, Maoshen
    Gu, Ke
    Qiao, Junfei
    PROCEEDINGS OF THE 2ND INTERNATIONAL CONFERENCE ON COMPUTER SCIENCE AND APPLICATION ENGINEERING (CSAE2018), 2018,
  • [27] Super-resolution enhancement and segmentation for digital rock based on multi-task joint deep neural network
    Wang, Yuetian
    Qin, Ruibao
    Wei, Dan
    Li, Xiongyan
    Wang, Peng
    Ye, Xinyu
    GEOENERGY SCIENCE AND ENGINEERING, 2024, 243
  • [28] Multi-Task Joint Learning for Graph Convolutional Neural Network Recommendations
    Wang, Yonggui
    Zou, Heyu
    Computer Engineering and Applications, 2024, 60 (04) : 306 - 314
  • [29] Brain MR image super-resolution via a deep convolutional neural network with multi-unit upsampling learning
    Xia, Hao
    Cai, Nian
    Wang, Huiheng
    Mao, Yadong
    Wang, Han
    Li, Jian
    Wang, Ping
    SIGNAL IMAGE AND VIDEO PROCESSING, 2021, 15 (05) : 931 - 939
  • [30] Brain MR image super-resolution via a deep convolutional neural network with multi-unit upsampling learning
    Hao Xia
    Nian Cai
    Huiheng Wang
    Yadong Mao
    Han Wang
    Jian Li
    Ping Wang
    Signal, Image and Video Processing, 2021, 15 : 931 - 939