2023
DOI: 10.32604/cmc.2023.031444
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CLGA Net: Cross Layer Gated Attention Network for Image Dehazing

Abstract: In this paper, we propose an end-to-end cross-layer gated attention network (CLGA-Net) to directly restore fog-free images. Compared with the previous dehazing network, the dehazing model presented in this paper uses the smooth cavity convolution and local residual module as the feature extractor, combined with the channel attention mechanism, to better extract the restored features. A large amount of experimental data proves that the defogging model proposed in this paper is superior to previous defogging tec… Show more

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“…We randomly selected seven hazy remote sensing images from the RESISC45test set to compare the dehazing performance of our proposed method with the CycleGAN method [27], the RefineDNet method [42], the Cycle-SNSPGAN method [43], the D4 method [44], the ADE-CycleGAN method [45], and the CLGA Net method [46]. The images are displayed in Figure 6, showcasing the hazy images, dehazed images using different methods, and haze-free images.…”
Section: Simulation On the Resisc45 Datasetmentioning
confidence: 99%
“…We randomly selected seven hazy remote sensing images from the RESISC45test set to compare the dehazing performance of our proposed method with the CycleGAN method [27], the RefineDNet method [42], the Cycle-SNSPGAN method [43], the D4 method [44], the ADE-CycleGAN method [45], and the CLGA Net method [46]. The images are displayed in Figure 6, showcasing the hazy images, dehazed images using different methods, and haze-free images.…”
Section: Simulation On the Resisc45 Datasetmentioning
confidence: 99%