Code for the paper "Location-aware Single Image Reflection Removal"

Overview

Location-aware Single Image Reflection Removal

Examples

The shown images are provided by the datasets from IBCLN, ERRNet, SIR2 and the Internet images.

The code and pretrained model for our paper: Location-aware Single Image Reflection Removal [Arxiv Preprint]


Prerequisites

Our code has been tested under the following platform and environment:

  • Ubuntu. CPU or NVIDIA GPU + CUDA, CuDNN
  • Python 3.7.3, Pytorch 1.2.0
  • Requirements: numpy, tqdm, Pillow, dominate, scikit-image

Setup

  • Clone or Download this repo
  • $ cd Location-aware-SIRR
  • $ mkdir model
  • Download the pretrained model here
  • Move the downloaded model(model.pth) to ./model folder

Usage

  • The example test images are provided in ./test_images/blend folder
  • If you have ground truth blackground images, put them into ./test_images/transmission folder ( Note that the same pair of images need to be named the same ).
  • Run python3 inference.py
  • The inference results are in the ./results folder

Citation

If you find our work helpful to your research, please cite our paper.

@article{dong2020location,
  author = {Zheng Dong and Ke Xu and Yin Yang and Hujun Bao and Weiwei Xu and Rynson W.H. Lau},
  title = {Location-aware Single Image Reflection Removal},
  journal={ArXiv},
  volume={abs/2012.07131},
  year = {2020}
}
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