TY - JOUR
T1 - TUSR-Net
T2 - Triple Unfolding Single Image Dehazing with Self-Regularization and Dual Feature to Pixel Attention
AU - Song, Xibin
AU - Zhou, Dingfu
AU - Li, Wei
AU - Dai, Yuchao
AU - Shen, Zhelun
AU - Zhang, Liangjun
AU - Li, Hongdong
N1 - Publisher Copyright:
© 1992-2012 IEEE.
PY - 2023
Y1 - 2023
N2 - Single image dehazing is a challenging and ill-posed problem due to severe information degeneration of images captured in hazy conditions. Remarkable progresses have been achieved by deep-learning based image dehazing methods, where residual learning is commonly used to separate the hazy image into clear and haze components. However, the nature of low similarity between haze and clear components is commonly neglected, while the lack of constraint of contrastive peculiarity between the two components always restricts the performance of these approaches. To deal with these problems, we propose an end-To-end self-regularized network (TUSR-Net) which exploits the contrastive peculiarity of different components of the hazy image, i.e, self-regularization (SR). In specific, the hazy image is separated into clear and hazy components and constraint between different image components, i.e., self-regularization, is leveraged to pull the recovered clear image closer to groundtruth, which largely promotes the performance of image dehazing. Meanwhile, an effective triple unfolding framework combined with dual feature to pixel attention is proposed to intensify and fuse the intermediate information in feature, channel and pixel levels, respectively, thus features with better representational ability can be obtained. Our TUSR-Net achieves better trade-off between performance and parameter size with weight-sharing strategy and is much more flexible. Experiments on various benchmarking datasets demonstrate the superiority of our TUSR-Net over state-of-The-Art single image dehazing methods.
AB - Single image dehazing is a challenging and ill-posed problem due to severe information degeneration of images captured in hazy conditions. Remarkable progresses have been achieved by deep-learning based image dehazing methods, where residual learning is commonly used to separate the hazy image into clear and haze components. However, the nature of low similarity between haze and clear components is commonly neglected, while the lack of constraint of contrastive peculiarity between the two components always restricts the performance of these approaches. To deal with these problems, we propose an end-To-end self-regularized network (TUSR-Net) which exploits the contrastive peculiarity of different components of the hazy image, i.e, self-regularization (SR). In specific, the hazy image is separated into clear and hazy components and constraint between different image components, i.e., self-regularization, is leveraged to pull the recovered clear image closer to groundtruth, which largely promotes the performance of image dehazing. Meanwhile, an effective triple unfolding framework combined with dual feature to pixel attention is proposed to intensify and fuse the intermediate information in feature, channel and pixel levels, respectively, thus features with better representational ability can be obtained. Our TUSR-Net achieves better trade-off between performance and parameter size with weight-sharing strategy and is much more flexible. Experiments on various benchmarking datasets demonstrate the superiority of our TUSR-Net over state-of-The-Art single image dehazing methods.
KW - attention
KW - dehazing
KW - Self-regularization
UR - http://www.scopus.com/inward/record.url?scp=85149033408&partnerID=8YFLogxK
U2 - 10.1109/TIP.2023.3234701
DO - 10.1109/TIP.2023.3234701
M3 - 文章
AN - SCOPUS:85149033408
SN - 1057-7149
VL - 32
SP - 1231
EP - 1244
JO - IEEE Transactions on Image Processing
JF - IEEE Transactions on Image Processing
ER -