2022
DOI: 10.1109/access.2022.3148167
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Feature Attention Parallel Aggregation Network for Single Image Haze Removal

Abstract: Images captured in hazy weather often suffer from color distortion and texture blur due to turbid media suspended in the atmosphere. In this paper, we propose a Feature Attention Parallel Aggregation Network (FAPANet) to restore a clear image directly from the corresponding hazy input. It adopts the encoder-decoder structure while incorporating residual learning and attention mechanism. FAPANet consists of two key modules: a novel feature attention aggregation module (FAAM) and an adaptive feature fusion modul… Show more

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Cited by 2 publications
(1 citation statement)
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“…Li et al [14] and Chen et al [17] proposed end-to-end haze removal networks, respectively, AOD-Net and GCANet, which learn the direct mapping between the degraded and original image without solving transmission and atmospheric light. Li et al [26] and Liu et al [27] incorporated the attention mechanism into the architecture of the neural network model and obtained excellent dehazing VOLUME 11, 2023 results. Dong et al [16] designed a multi-scale boosted dehazing network based on two principles, boosting and error feedback, which can successfully restore degraded natural scene images.…”
Section: B Deep-learning-based Dehazing Methodsmentioning
confidence: 99%
“…Li et al [14] and Chen et al [17] proposed end-to-end haze removal networks, respectively, AOD-Net and GCANet, which learn the direct mapping between the degraded and original image without solving transmission and atmospheric light. Li et al [26] and Liu et al [27] incorporated the attention mechanism into the architecture of the neural network model and obtained excellent dehazing VOLUME 11, 2023 results. Dong et al [16] designed a multi-scale boosted dehazing network based on two principles, boosting and error feedback, which can successfully restore degraded natural scene images.…”
Section: B Deep-learning-based Dehazing Methodsmentioning
confidence: 99%