Attention based Broadly Self-guided Network for Low light Image
Enhancement
- URL: http://arxiv.org/abs/2112.06226v2
- Date: Wed, 15 Dec 2021 09:06:05 GMT
- Title: Attention based Broadly Self-guided Network for Low light Image
Enhancement
- Authors: Zilong Chen, Yaling Liang, Minghui Du
- Abstract summary: We propose Attention based Broadly self-guided network (ABSGN) for real world low-light image Enhancement.
The proposed network is validated by many mainstream benchmark.
Additional experimental results show that the proposed network outperforms most of state-of-the-art low-light image Enhancement solutions.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: During the past years,deep convolutional neural networks have achieved
impressive success in low-light Image Enhancement.Existing deep learning
methods mostly enhance the ability of feature extraction by stacking network
structures and deepening the depth of the network.which causes more runtime
cost on single image.In order to reduce inference time while fully extracting
local features and global features.Inspired by SGN,we propose a Attention based
Broadly self-guided network (ABSGN) for real world low-light image
Enhancement.such a broadly strategy is able to handle the noise at different
exposures.The proposed network is validated by many mainstream
benchmark.Additional experimental results show that the proposed network
outperforms most of state-of-the-art low-light image Enhancement solutions.
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