Pytorch implementation for DFN: Distributed Feedback Network for Single-Image Deraining.

Related tags

Deep LearningDFN
Overview

DFN:Distributed Feedback Network for Single-Image Deraining

Abstract

Recently, deep convolutional neural networks have achieved great success for single-image deraining. However, affected by the intrinsic overlapping between rain streaks and background texture patterns, a majority of these methods tend to almost remove texture details in rain-free regions and lead to over-smoothing effects in the recovered background. To generate reasonable rain streak layers and improve the reconstruction quality of the background, we propose a distributed feedback network (DFN) in recurrent structure. A novel feedback block is designed to implement the feedback mechanism. In each feedback block, the hidden state with high-level information (output) will flow into the next iteration to correct the low-level representations (input). By stacking multiple feedback blocks, the proposed network where the hidden states are distributed can extract powerful high-level representations for rain streak layers. Curriculum learning is employed to connect the loss of each iteration and ensure that hidden states contain the notion of output. In addition, a self-ensemble strategy for rain removal task, which can retain the approximate vertical character of rain streaks, is explored to maximize the potential performance of the deraining model. Extensive experimental results demonstrated the superiority of the proposed method in comparison with other deraining methods.

Image

Requirements

*Python 3.7,Pytorch >= 0.4.0
*Requirements: opencv-python
*Platforms: Ubuntu 18.04,cuda-10.2
*MATLAB for calculating PSNR and SSIM

Datasets

DFN is trained and tested on five benchamark datasets: Rain100L[1],Rain100H[1],RainLight[2],RainHeavy[2] and Rain12[3]. It should be noted that DFN is trained on strict 1,254 images for Rain100H.

*Note:

(i) The authors of [1] updated the Rain100L and Rain100H, we call the new datasets as RainLight and RainHeavy here.

(ii) The Rain12 contains only 12 pairs of testing images, we use the model trained on Rain100L to test on Rain12.

Getting Started

Test

All the pre-trained models were placed in ./logs/.

Run the test_DFN.py to obtain the deraining images. Then, you can calculate the evaluation metrics by run the MATLAB scripts in ./statistics/. For example, if you want to compute the average PSNR and SSIM on Rain100L, you can run the Rain100L.m.

Train

If you want to train the models, you can run the train_DFN.py and don't forget to change the args in this file. Or, you can run in the terminal by the following code:

python train_DFN.py --save_path path_to_save_trained_models --data_path path_of_the_training_dataset

Results

Average PSNR and SSIM values of DFN on five datasets are shown:

Datasets GMM DDN ResGuideNet JORDER-E SSIR PReNet BRN MSPFN DFN DFN+
Rain100L 28.66/0.865 32.16/0.936 33.16/0.963 - 32.37/0.926 37.48/0.979 38.16/0.982 37.5839/0.9784 39.22/0.985 39.85/0.987
Rain100H 15.05/0.425 21.92/0.764 25.25/0.841 - 22.47/0.716 29.62/0.901 30.73/0.916 30.8239/0.9055 31.40/0.926 31.81/0.930
RainLight - 31.66/0.922 - 39.13/0.985 32.20/0.929 37.93/0.983 38.86/0.985 39.7540/0.9862 39.53/0.987 40.12/0.988
RainHeavy - 22.03/0.713 - 29.21/0.891 22.17/0.719 29.36/0.903 30.27/0.917 30.7112/0.9129 31.07/0.927 31.47/0.931
Rain12 32.02/0.855 31.78/0.900 29.45/0.938 - 34.02/0.935 36.66/0.961 36.74/0.959 35.7780/0.9514 37.19/0.961 37.55/0.963

Image

References

[1]Yang W, Tan R, Feng J, Liu J, Guo Z, and Yan S. Deep joint rain detection and removal from a single image. In IEEE CVPR 2017.

[2]Yang W, Tan R, Feng J, Liu J, Yan S, and Guo Z. Joint rain detection and removal from a single image with contextualized deep networks. IEEE T-PAMI 2019.

[3]Li Y, Tan RT, Guo X, Lu J, and Brown M. Rain streak removal using layer priors. In IEEE CVPR 2016.

Citation

If you find our research or code useful for you, please cite our paper:

@article{DING2021,
  title = {Distributed Feedback Network for Single-Image Deraining},
  journal = {Information Sciences},
  year = {2021},
  issn = {0020-0255},
  doi = {https://doi.org/10.1016/j.ins.2021.02.080},
  url = {https://www.sciencedirect.com/science/article/pii/S0020025521002371},
  author = {Jiajun Ding and Huanlei Guo and Hang Zhou and Jun Yu and Xiongxiong He and Bo Jiang}
}
Owner
Zhejiang University of Technology(ZJUT). Research: Image Enhencement, Few-shot Learning, GAN.
Simple node deletion tool for onnx.

snd4onnx Simple node deletion tool for onnx. I only test very miscellaneous and limited patterns as a hobby. There are probably a large number of bugs

Katsuya Hyodo 6 May 15, 2022
CAR-API: Cityscapes Attributes Recognition API

CAR-API: Cityscapes Attributes Recognition API This is the official api to download and fetch attributes annotations for Cityscapes Dataset. Content I

Kareem Metwaly 5 Dec 22, 2022
Image segmentation with private İstanbul Dataset

Image Segmentation This repo was created for academic research and test result. Repo will update after academic article online. This repo contains wei

İrem KÖMÜRCÜ 9 Dec 11, 2022
Flexible-CLmser: Regularized Feedback Connections for Biomedical Image Segmentation

Flexible-CLmser: Regularized Feedback Connections for Biomedical Image Segmentation The skip connections in U-Net pass features from the levels of enc

Boheng Cao 1 Dec 29, 2021
[NeurIPS 2021]: Are Transformers More Robust Than CNNs? (Pytorch implementation & checkpoints)

Are Transformers More Robust Than CNNs? Pytorch implementation for NeurIPS 2021 Paper: Are Transformers More Robust Than CNNs? Our implementation is b

Yutong Bai 145 Dec 01, 2022
This is the solution for 2nd rank in Kaggle competition: Feedback Prize - Evaluating Student Writing.

Feedback Prize - Evaluating Student Writing This is the solution for 2nd rank in Kaggle competition: Feedback Prize - Evaluating Student Writing. The

Udbhav Bamba 41 Dec 14, 2022
Deploy optimized transformer based models on Nvidia Triton server

🤗 Hugging Face Transformer submillisecond inference 🤯 and deployment on Nvidia Triton server Yes, you can perfom inference with transformer based mo

Lefebvre Sarrut Services 1.2k Jan 05, 2023
Source code and Dataset creation for the paper "Neural Symbolic Regression That Scales"

NeuralSymbolicRegressionThatScales Pytorch implementation and pretrained models for the paper "Neural Symbolic Regression That Scales", presented at I

35 Nov 25, 2022
MIMIC Code Repository: Code shared by the research community for the MIMIC-III database

MIMIC Code Repository The MIMIC Code Repository is intended to be a central hub for sharing, refining, and reusing code used for analysis of the MIMIC

MIT Laboratory for Computational Physiology 1.8k Dec 26, 2022
A library for differentiable nonlinear optimization.

Theseus A library for differentiable nonlinear optimization built on PyTorch to support constructing various problems in robotics and vision as end-to

Meta Research 1.1k Dec 30, 2022
A Python Reconnection Tool for alt:V

altv-reconnect What? It invokes a reconnect in the altV Client Dev Console. You get to determine when your local client should reconnect when developi

8 Jun 30, 2022
A tensorflow=1.13 implementation of Deconvolutional Networks on Graph Data (NeurIPS 2021)

GDN A tensorflow=1.13 implementation of Deconvolutional Networks on Graph Data (NeurIPS 2021) Abstract In this paper, we consider an inverse problem i

4 Sep 13, 2022
Introducing neural networks to predict stock prices

IntroNeuralNetworks in Python: A Template Project IntroNeuralNetworks is a project that introduces neural networks and illustrates an example of how o

Vivek Palaniappan 637 Jan 04, 2023
A flexible framework of neural networks for deep learning

Chainer: A deep learning framework Website | Docs | Install Guide | Tutorials (ja) | Examples (Official, External) | Concepts | ChainerX Forum (en, ja

Chainer 5.8k Jan 06, 2023
Resources complimenting the Machine Learning Course led in the Faculty of mathematics and informatics part of Sofia University.

Machine Learning and Data Mining, Summer 2021-2022 How to learn data science and machine learning? Programming. Learn Python. Basic Statistics. Take a

Simeon Hristov 8 Oct 04, 2022
banditml is a lightweight contextual bandit & reinforcement learning library designed to be used in production Python services.

banditml is a lightweight contextual bandit & reinforcement learning library designed to be used in production Python services. This library is developed by Bandit ML and ex-authors of Facebook's app

Bandit ML 51 Dec 22, 2022
PyTorch implementations of deep reinforcement learning algorithms and environments

Deep Reinforcement Learning Algorithms with PyTorch This repository contains PyTorch implementations of deep reinforcement learning algorithms and env

Petros Christodoulou 4.7k Jan 04, 2023
PyTea: PyTorch Tensor shape error analyzer

PyTea: PyTorch Tensor Shape Error Analyzer paper project page Requirements node.js = 12.x python = 3.8 z3-solver = 4.8 How to install and use # ins

ROPAS Lab. 240 Jan 02, 2023
A simple configurable bot for sending arXiv article alert by mail

arXiv-newsletter A simple configurable bot for sending arXiv article alert by mail. Prerequisites PyYAML=5.3.1 arxiv=1.4.0 Configuration All config

SXKDZ 21 Nov 09, 2022
keyframes-CNN-RNN(action recognition)

keyframes-CNN-RNN(action recognition) Environment: python=3.7 pytorch=1.2 Datasets: Following the format of UCF101 action recognition. Run steps: Mo

4 Feb 09, 2022