Jointly Learning of Heavy Rain Removal and Super-Resolution in Single Images

  • Vu, Dac Tung (Korea Advanced Institute of Science and Technology Dep. Of Electronic Engineering) ;
  • Kim, Munchurl (Korea Advanced Institute of Science and Technology Dep. Of Electronic Engineering)
  • ;
  • 김문철 (한국과학기술원 전기 및 전자 공학과)
  • Published : 2020.11.28

Abstract

Images were taken under various weather such as rain, haze, snow often show low visibility, which can dramatically decrease accuracy of some tasks in computer vision: object detection, segmentation. Besides, previous work to enhance image usually downsample the image to receive consistency features but have not yet good upsample algorithm to recover original size. So, in this research, we jointly implement removal streak in heavy rain image and super resolution using a deep network. We put forth a 2-stage network: a multi-model network followed by a refinement network. The first stage using rain formula in the single image and two operation layers (addition, multiplication) removes rain streak and noise to get clean image in low resolution. The second stage uses refinement network to recover damaged background information as well as upsample, and receive high resolution image. Our method improves visual quality image, gains accuracy in human action recognition task in datasets. Extensive experiments show that our network outperforms the state of the art (SoTA) methods.

Keywords