TY - GEN
T1 - Dehazing Network Based on U-Net Structure and Residual Block
AU - Zhang, Wenbo
AU - Li, Haoze
AU - Sun, Han
AU - Bai, Yongqiang
N1 - Publisher Copyright:
© 2022 Technical Committee on Control Theory, Chinese Association of Automation.
PY - 2022
Y1 - 2022
N2 - With the development of deep learning technology, the dehazing method based on convolutional neural network has also developed rapidly. However, it still faces some problems such as incomplete dehazing and difficulty in detail restoration. Aiming at the problems, we propose a dehazing network based on U-Net structure and residual module. In the down sampling process, we introduce the residual block of attention mechanism, which effectively improves the feature extraction and expression ability of the network. In the middle part of the network, the smooth dilation convolution residual block is used to expand the receptive field of the network and improve the restoration effect of small items. At the same time, we introduce a feature fusion mechanism based on attention mechanism, which can reduce the loss of information and weight the down-sampling features into intermediate features. In the process of up sampling, the method of adding elements instead of feature stitching is used to reduce the number of parameters and realize the function of jump connection. Finally, dense convolution residual blocks are added to the jump connection between input and output to further improve the performance. The experimental results show that the PSNR of this method can reach 32.893, which is better than the existing methods.
AB - With the development of deep learning technology, the dehazing method based on convolutional neural network has also developed rapidly. However, it still faces some problems such as incomplete dehazing and difficulty in detail restoration. Aiming at the problems, we propose a dehazing network based on U-Net structure and residual module. In the down sampling process, we introduce the residual block of attention mechanism, which effectively improves the feature extraction and expression ability of the network. In the middle part of the network, the smooth dilation convolution residual block is used to expand the receptive field of the network and improve the restoration effect of small items. At the same time, we introduce a feature fusion mechanism based on attention mechanism, which can reduce the loss of information and weight the down-sampling features into intermediate features. In the process of up sampling, the method of adding elements instead of feature stitching is used to reduce the number of parameters and realize the function of jump connection. Finally, dense convolution residual blocks are added to the jump connection between input and output to further improve the performance. The experimental results show that the PSNR of this method can reach 32.893, which is better than the existing methods.
KW - Attention mechanism
KW - Image Dehazing
KW - Residual Network
UR - http://www.scopus.com/inward/record.url?scp=85140437828&partnerID=8YFLogxK
U2 - 10.23919/CCC55666.2022.9902049
DO - 10.23919/CCC55666.2022.9902049
M3 - Conference contribution
AN - SCOPUS:85140437828
T3 - Chinese Control Conference, CCC
SP - 6576
EP - 6581
BT - Proceedings of the 41st Chinese Control Conference, CCC 2022
A2 - Li, Zhijun
A2 - Sun, Jian
PB - IEEE Computer Society
T2 - 41st Chinese Control Conference, CCC 2022
Y2 - 25 July 2022 through 27 July 2022
ER -