Skip to content

Officical code of paper "An efficient deep convolutional laplacian pyramid architecture for CS reconstruction at low sampling ratios" ICASSP2018

Notifications You must be signed in to change notification settings

WenxueCui/LapCSNet

Repository files navigation

LapCSNet

  • Officical code of paper "An efficient deep convolutional laplacian pyramid architecture for CS reconstruction at low sampling ratios" ICASSP2018
  • Download the paper: https://arxiv.org/pdf/1804.04970.pdf

Framework of LapCSNet

image

Requirements

How to Run

Training

  • Copying the function in +dagnn folder to your Matconvnet location <MatconvNet>\matlab\+dagnn
  • Preparing the training data. (T91 and BSDS200 are included in our repo)
  • Train the LapCSNet, run the code train_LapCSN(0.1, 2, 0);
The first param is CS subrate
The second param is the number of conv layers in each pyramid level
The third param is gpu setting. (0 is CPU, 1 is GPU)

Testing

  • Preparing the testing data. (Set5 and Set14 are included in our repo)
  • Test the LapCSNet, run the code test_LapCSN_main(100, 200)
The first param is start epoch for testing model
The second param is end epoch for testing model 

Experimental Results

  • Subjective results

image

  • Objective results

image

Additional instructions

  • For training data, you can choose any dataset by yourself.
  • When subrate<=0.25, the laplacian structure can be used.
  • If you like this repo, Star or Fork to support my work. Thank you.
  • If you have any problem, please email wxcui@hit.edu.cn

Citation

  • If you find the code is useful in your research, please cite:
@article{Cui2018An,
  title={An efficient deep convolutional laplacian pyramid architecture for CS reconstruction at low sampling ratios},
  journal={IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)},
  author={Cui, Wenxue and Xu, Heyao and Gao, Xinwei and Zhang, Shengping and Jiang, Feng and Zhao, Debin},
  year={2018},
}

Acknowledgments

This code is built based on the repo https://github.com/phoenix104104/LapSRN

About

Officical code of paper "An efficient deep convolutional laplacian pyramid architecture for CS reconstruction at low sampling ratios" ICASSP2018

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages