Amazing technological breakthrough possible @S-Logix pro@slogix.in

Office Address

  • #5, First Floor, 4th Street Dr. Subbarayan Nagar Kodambakkam, Chennai-600 024 Landmark : Samiyar Madam
  • pro@slogix.in
  • +91- 81240 01111

Social List

Unsupervised Neural Rendering for Image Hazing - 2022

Unsupervised Neural Rendering For Image Hazing

Research Paper on Unsupervised Neural Rendering For Image Hazing

Research Area:  Machine Learning

Abstract:

Image hazing aims to render a hazy image from a given clean one, which could be applied to a variety of practical applications such as gaming, filming, photographic filtering, and image dehazing. To generate plausible haze, we study two less-touched but challenging problems in hazy image rendering, namely, i) how to estimate the transmission map from a single image without auxiliary information, and ii) how to adaptively learn the airlight from exemplars, i.e. , unpaired real hazy images. To this end, we propose a neural rendering method for image hazing, dubbed as HazeGEN. To be specific, HazeGEN is a knowledge-driven neural network which estimates the transmission map by leveraging a new prior, i.e. , there exists the structure similarity ( e.g. , contour and luminance) between the transmission map and the input clean image. To adaptively learn the airlight, we build a neural module based on another new prior, i.e. , the rendered hazy image and the exemplar are similar in the airlight distribution. To the best of our knowledge, this could be the first attempt to deeply render hazy images in an unsupervised fashion. Compared with existing haze generation methods, HazeGEN renders the hazy images in an unsupervised, learnable, and controllable manner, thus avoiding the labor-intensive efforts in paired data collection and the domain-shift issue in haze generation. Extensive experiments show the promising performance of our method comparing with some baselines in both qualitative and quantitative comparisons.

Keywords:  
Unsupervised
Neural Rendering
Image Hazing
Deep Learning
Machine Learning

Author(s) Name:   Boyun Li; Yijie Lin; Jinfeng Bai; Peng Hu; Jiancheng Lv; Xi Peng

Journal name:  IEEE Transactions on Image Processing

Conferrence name:  

Publisher name:  IEEE

DOI:  10.1109/TIP.2022.3177321

Volume Information:  Volume: 31, Page(s): 3987 - 3996