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A robust deformed convolutional neural network for image denoising(RDDCNN) is proposed by Qi Zhang, Jingyu Xiao, Chunwei Tian*, Jerry Chun-Wei Lin and Shichao Zhang. Also, it is accepted by the CAAI Transactions on Intelligence Technology (Office journal of the Chinese Association for Artificial Intelligence/SCI:IF-7.985)in 2022 and it is implemented by PyTorch. This paper can be obtained at https://ietresearch.onlinelibrary.wiley.com/doi/full/10.1049/cit2.12110.
RDDCNN mainly combines a deformable convolution and a stacked architecture with a dilated convolution to restore high-quality pixels, according to relations of surrounding pixels and obtained structural information in image denoising.
Absract
Due to strong learning ability, convolutional neural networks (CNNs) have been developed in image denoising. However, convolutional operations may change original distributions of noise in corrupted images, which may increase training difficulty in image denoising. Using relations of surrounding pixels can effectively resolve this problem. Inspired by that, we propose a robust deformed denoising CNN (RDDCNN) in this paper. The proposed RDDCNN contains three blocks: a deformable block (DB), an enhanced block (EB) and a residual block (RB). The DB can extract more representative noise features via a deformable learnable kernel and stacked convolutional architecture, according to relations of surrounding pixels. The EB can facilitate contextual interaction through a dilated convolution and a novel combination of convolutional layers, batch normalization (BN) and ReLU, which can enhance the learning ability of the proposed RDDCNN. To address long-term dependency problem, the RB is used to enhance the memory ability of shallow layer on deep layers and construct a clean image. Besides, we implement a blind denoising model. Experimental results demonstrate that our denoising model outperforms popular denoising methods in terms of qualitative and quantitative analysis. Codes can be obtained at https://github.com/hellloxiaotian/RDDCNN.
Requirements
Python 3.7
Pytorch 1.1
cuda 10.0
cudnn 7
torchvision
openCV for Python
HDF5 for Python
Dataset
Training sets
The training set of gray noisy images can be downloaded at here.
The training set of real noisy images can be downloaded at here.
Test sets
The test set BSD68 of gray noisy images can be downloaded at here.
The test set Set12 of gray noisy images can be downloaded at here.
The test set CC of real noisy images can be downloaded at here.
Training
For training with gray images with known noise level, run the following training example:
CUDA_VISIBLE_DEVICES=0 python gray/train.py --sigma $SIGMA --mode S --train_data $YOUR_SET_PATH
For training with gray images with unknown noise level, run the following training example:
CUDA_VISIBLE_DEVICES=0 python gray/train.py --sigma $SIGMA --mode B --train_data $YOUR_SET_PATH
For training with real images, run the following training example:
1.Denoising results of different methods on BSD68 for noise level of 25
2.Comparisons of deformable convolution and common convolution
3.PSNR (dB) results of several networks on BSD68 for noise level of 15, 25, and 50
4.Average PSNR (dB) results of different methods on Set12 with noise levels of 15, 25 and 50
5.Complexity of different denoising methods
6.Running time (s) of different methods for 256×256, 512×512, and 1024×1024
7.Average PSNR (dB) of different denoising methods on CC
Visual results
Denoising results of different methods on one image from BSD68 when noise level 25. (a) Original image (b) Noisy image/20.19 dB (c) BM3D /36.59 dB (d) WNNM /37.22 dB (e) IRCNN /38.17 dB (f) FFDNet /38.41 dB (g) DnCNN /38.45 dB (h) RDDCNN/38.64 dB.
Denoising results of different methods on one image from BSD68 when noise level is 50. (a) Original image (b) Noisy image/14.66 dB (c) BM3D /29.87 dB (d) WNNM /30.07 dB (e) IRCNN /30.33 dB (f) DnCNN /30.48 dB (g) FFDNet /30.56 dB (h) RDDCNN/30.67 dB.
Denoising results of different methods on one image from Set12 when noise level is 15. (a) Original image (b) Noisy image/24.60 dB (c) BM3D /31.37 dB (d) WNNM /31.62 dB (e) FFDNet /31.81 dB (f) DnCNN /31.83 dB (g) IRCNN /31.84 dB (h) RDDCNN/31.93 dB
Cited information is shown as follows.
1. Zhang Q, Xiao J, Tian C, et al. A robust deformed convolutional neural network (CNN) for image denoising[J]. CAAI Transactions on Intelligence Technology, 2022.
2. @article{zhang2022robust,
title={A robust deformed convolutional neural network (CNN) for image denoising},
author={Zhang, Qi and Xiao, Jingyu and Tian, Chunwei and Chun-Wei Lin, Jerry and Zhang, Shichao},
journal={CAAI Transactions on Intelligence Technology},