Code for CVPR2021 paper "Robust Reflection Removal with Reflection-free Flash-only Cues"

Overview

Robust Reflection Removal with Reflection-free Flash-only Cues (RFC)

Paper | To be released: Project Page | Video | Data

Tensorflow implementation for:
Robust Reflection Removal with Reflection-free Flash-only Cues
Chenyang Lei, Qifeng Chen
HKUST

in CVPR 2021

To Do

  • Release test code
  • Prepare paper and upload to arxiv
  • Make project page
  • Release training code
  • Release dataset
  • Release raw data processing code

TL;DR quickstart

To setup a conda environment, test on demo data:

conda env create -f environment.yml
conda activate flashrr-rfc
bash download.sh
python test.py

Setup

Environment

This code is based on tensorflow. It has been tested on Ubuntu 18.04 LTS.

Anaconda is recommended: Ubuntu 18.04 | Ubuntu 16.04

After installing Anaconda, you can setup the environment simply by

conda env create -f environment.yml

Download checkpoint and VGG model

Download the ckpt and VGG model by

bash download.sh

What is a RFC (Reflection-free Flash-only Cue)?

We propose a simple yet effective reflection-free cue for robust reflection removal from a pair of flash and ambient (no-flash) images. The reflection-free cue exploits a flash-only image obtained by subtracting the ambient image from the corresponding flash image in raw data space. The flash-only image is equivalent to an image taken in a dark environment with only a flash on.

Citation

If you find our work useful for your research, please consider citing the following papers :)

@misc{lei2021robust,
      title={Robust Reflection Removal with Reflection-free Flash-only Cues}, 
      author={Chenyang Lei and Qifeng Chen},
      year={2021},
      eprint={2103.04273},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}

or

@InProceedings{Lei_2021_RFC,
     title={Robust Reflection Removal with Reflection-free Flash-only Cues}, 
     author={Chenyang Lei and Qifeng Chen},
     booktitle = {IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
     year = {2021}
}

If you are also interested in the polarization reflection removal, please refer to this work.

Contact

Please contact me if there is any question (Chenyang Lei, [email protected])

License

TBD

Owner
Chenyang LEI
CS Ph.D. student at HKUST
Chenyang LEI
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