您当前的位置:
首页 >
文章列表页 >
Underwater image enhancement using joint texture perception and color histogram features
Information Sciences | 更新时间:2024-08-19
    • Underwater image enhancement using joint texture perception and color histogram features

    • In the field of underwater image enhancement, researchers have proposed a novel network structure based on deep learning, which effectively improves image quality and shortens processing time by combining texture perception network and color histogram feature extraction network, providing an efficient solution for underwater visual enhancement tasks.
    • Optics and Precision Engineering   Vol. 32, Issue 13, Pages: 2112-2127(2024)
    • DOI:10.37188/OPE.20243213.2112    

      CLC: TP394.1;TH691.9
    • Received:01 November 2023

      Revised:12 December 2023

      Published:10 July 2024

    移动端阅览

  • YUAN Guoming,LIU Haijun,LI Xiaoli,et al.Underwater image enhancement using joint texture perception and color histogram features[J].Optics and Precision Engineering,2024,32(13):2112-2127. DOI: 10.37188/OPE.20243213.2112.

  •  
  •  

0

Views

262

下载量

1

CSCD

Alert me when the article has been cited
提交
Tools
Download
Export Citation
Share
Add to favorites
Add to my album

Related Articles

Degradation remote sensing image quality enhancement based on frequency-domain-spatial-domain hybrid attention
Global hand pose estimation based on pixel voting
Computed tomography image segmentation of cell pole piece via strip attention mechanism
YOLOv8 model-based additive manufacturing micro porosity defect detection and its dimension measurement
3DRes-ViT knee osteoarthritis classification model based on multimodal fusion

Related Author

WEI Hua
TANG Xiongxin
NIE Haitao
WANG Jing
YANG Hanxiang
XIA Yuanyuan
XU Fanjiang
LIN Jingang

Related Institution

Laboratory of Science and Technology on Integrated Information System, Institute of Software, Chinese Academy of Sciences
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences
School of Mechanical and Automotive Engineering, Qingdao University of Technology
ICT Research Center, Key Laboratory of Optoelectronic Technology and Systems of Ministry of Education, Chongqing University
College of Optoelectronic Engineering, Chongqing University
0