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Papers/FFA-Net: Feature Fusion Attention Network for Single Image...

FFA-Net: Feature Fusion Attention Network for Single Image Dehazing

Xu Qin, Zhilin Wang, Yuanchao Bai, Xiaodong Xie, Huizhu Jia

2019-11-18Image DehazingSingle Image Dehazing
PaperPDFCodeCode(official)CodeCode

Abstract

In this paper, we propose an end-to-end feature fusion at-tention network (FFA-Net) to directly restore the haze-free image. The FFA-Net architecture consists of three key components: 1) A novel Feature Attention (FA) module combines Channel Attention with Pixel Attention mechanism, considering that different channel-wise features contain totally different weighted information and haze distribution is uneven on the different image pixels. FA treats different features and pixels unequally, which provides additional flexibility in dealing with different types of information, expanding the representational ability of CNNs. 2) A basic block structure consists of Local Residual Learning and Feature Attention, Local Residual Learning allowing the less important information such as thin haze region or low-frequency to be bypassed through multiple local residual connections, let main network architecture focus on more effective information. 3) An Attention-based different levels Feature Fusion (FFA) structure, the feature weights are adaptively learned from the Feature Attention (FA) module, giving more weight to important features. This structure can also retain the information of shallow layers and pass it into deep layers. The experimental results demonstrate that our proposed FFA-Net surpasses previous state-of-the-art single image dehazing methods by a very large margin both quantitatively and qualitatively, boosting the best published PSNR metric from 30.23db to 36.39db on the SOTS indoor test dataset. Code has been made available at GitHub.

Results

TaskDatasetMetricValueModel
DehazingHaze4kPSNR26.96FFA-Net
DehazingHaze4kSSIM0.95FFA-Net
DehazingSOTS IndoorPSNR36.39FFA-Net
DehazingSOTS IndoorSSIM0.989FFA-Net
DehazingKITTIPSNR27.45FFA-Net
DehazingRESIDE-6KPSNR29.96FFA-Net
DehazingRESIDE-6KSSIM0.973FFA-Net
DehazingRS-HazePSNR39.39FFA-Net
DehazingRS-HazeSSIM0.969FFA-Net
DehazingSOTS OutdoorPSNR33.57FFA-Net
DehazingSOTS OutdoorSSIM0.9804FFA-Net
Image DehazingHaze4kPSNR26.96FFA-Net
Image DehazingHaze4kSSIM0.95FFA-Net
Image DehazingSOTS IndoorPSNR36.39FFA-Net
Image DehazingSOTS IndoorSSIM0.989FFA-Net
Image DehazingKITTIPSNR27.45FFA-Net
Image DehazingRESIDE-6KPSNR29.96FFA-Net
Image DehazingRESIDE-6KSSIM0.973FFA-Net
Image DehazingRS-HazePSNR39.39FFA-Net
Image DehazingRS-HazeSSIM0.969FFA-Net
Image DehazingSOTS OutdoorPSNR33.57FFA-Net
Image DehazingSOTS OutdoorSSIM0.9804FFA-Net

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