A new end-to-end image dehazing algorithm based on residual attention mechanism
Traditional image dehazing algorithms based on prior knowledge and deep learning rely on the atmospheric scattering model and are easy to cause color distortion and incomplete dehazing. To solve these problems, an end-to-end image dehazing algorithm based on residual attention mechanism is proposed...
Format: | Article |
---|---|
Language: | zho |
Published: |
The Northwestern Polytechnical University
2021-08-01
|
Series: | Xibei Gongye Daxue Xuebao |
Subjects: | |
Online Access: | https://www.jnwpu.org/articles/jnwpu/full_html/2021/04/jnwpu2021394p901/jnwpu2021394p901.html |
id |
doaj-5c3dd818e4eb4b7da5ee2f2f0a397ad6 |
---|---|
record_format |
Article |
spelling |
doaj-5c3dd818e4eb4b7da5ee2f2f0a397ad62021-10-05T13:16:43ZzhoThe Northwestern Polytechnical UniversityXibei Gongye Daxue Xuebao1000-27582609-71252021-08-0139490190810.1051/jnwpu/20213940901jnwpu2021394p901A new end-to-end image dehazing algorithm based on residual attention mechanism01234School of Computer and Information Engineering, Tianjin Chengjian UniversitySchool of Computer and Information Engineering, Tianjin Chengjian UniversitySchool of Computer and Information Engineering, Tianjin Chengjian UniversitySchool of Computer and Information Engineering, Tianjin Chengjian UniversitySchool of Computer and Information Engineering, Tianjin Chengjian UniversityTraditional image dehazing algorithms based on prior knowledge and deep learning rely on the atmospheric scattering model and are easy to cause color distortion and incomplete dehazing. To solve these problems, an end-to-end image dehazing algorithm based on residual attention mechanism is proposed in this paper. The network includes four modules: encoder, multi-scale feature extraction, feature fusion and decoder. The encoder module encodes the input haze image into feature map, which is convenient for subsequent feature extraction and reduces memory consumption; the multi-scale feature extraction module includes residual smoothed dilated convolution module, residual block and efficient channel attention, which can expand the receptive field and extract different scale features by filtering and weighting; the feature fusion module with efficient channel attention adjusts the channel weight dynamically, acquires rich context information and suppresses redundant information so as to enhance the ability to extract haze density image of the network; finally, the encoder module maps the fused feature nonlinearly to obtain the haze density image and then restores the haze free image. The qualitative and quantitative tests based on SOTS test set and natural haze images show good objective and subjective evaluation results. This algorithm improves the problems of color distortion and incomplete dehazing effectively.https://www.jnwpu.org/articles/jnwpu/full_html/2021/04/jnwpu2021394p901/jnwpu2021394p901.htmlimage dehazingdeep learningchannel attention mechanismresidual smoothed dilated convolutionfeature extraction |
collection |
DOAJ |
language |
zho |
format |
Article |
sources |
DOAJ |
title |
A new end-to-end image dehazing algorithm based on residual attention mechanism |
spellingShingle |
A new end-to-end image dehazing algorithm based on residual attention mechanism Xibei Gongye Daxue Xuebao image dehazing deep learning channel attention mechanism residual smoothed dilated convolution feature extraction |
title_short |
A new end-to-end image dehazing algorithm based on residual attention mechanism |
title_full |
A new end-to-end image dehazing algorithm based on residual attention mechanism |
title_fullStr |
A new end-to-end image dehazing algorithm based on residual attention mechanism |
title_full_unstemmed |
A new end-to-end image dehazing algorithm based on residual attention mechanism |
title_sort |
new end-to-end image dehazing algorithm based on residual attention mechanism |
publisher |
The Northwestern Polytechnical University |
series |
Xibei Gongye Daxue Xuebao |
issn |
1000-2758 2609-7125 |
publishDate |
2021-08-01 |
description |
Traditional image dehazing algorithms based on prior knowledge and deep learning rely on the atmospheric scattering model and are easy to cause color distortion and incomplete dehazing. To solve these problems, an end-to-end image dehazing algorithm based on residual attention mechanism is proposed in this paper. The network includes four modules: encoder, multi-scale feature extraction, feature fusion and decoder. The encoder module encodes the input haze image into feature map, which is convenient for subsequent feature extraction and reduces memory consumption; the multi-scale feature extraction module includes residual smoothed dilated convolution module, residual block and efficient channel attention, which can expand the receptive field and extract different scale features by filtering and weighting; the feature fusion module with efficient channel attention adjusts the channel weight dynamically, acquires rich context information and suppresses redundant information so as to enhance the ability to extract haze density image of the network; finally, the encoder module maps the fused feature nonlinearly to obtain the haze density image and then restores the haze free image. The qualitative and quantitative tests based on SOTS test set and natural haze images show good objective and subjective evaluation results. This algorithm improves the problems of color distortion and incomplete dehazing effectively. |
topic |
image dehazing deep learning channel attention mechanism residual smoothed dilated convolution feature extraction |
url |
https://www.jnwpu.org/articles/jnwpu/full_html/2021/04/jnwpu2021394p901/jnwpu2021394p901.html |
_version_ |
1716841917295099904 |