MARG-UNet: A Single Image Dehazing Network Based on Multimodal Attention Residual Group

Hao Guo, Jin-Chun Piao
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引用次数: 1

Abstract

In real life, fog is generated under specific weather conditions, which reduces the color fidelity and information integrity of outdoor images. Although dehazing methods based on the convolutional neural network (CNN) had been rapid and significant progress, there are still problems of non-homogeneous haze that cannot be completely removed in the image, and the image after dehazing appears conspicuous color and structure migration between the hazy-free image and the clean image, which cannot be consistent with the human visual system. Based on the above problems, this paper proposes a dehazing model with encoder-decoder architecture, which enhances the feature extraction ability of non-homogeneous by embedding channel attention and pixel attention in the residual blocks, enhancing the dehazing performance of the model. At the same time, the multiscale structural similarity index (MS-SSIM) loss function and Mean Absolute Error (MAE) loss function is introduced to make inconspicuous color and structure deviation between the dehazing image and the clean image. Experiment results show that the Peak Signal to Noise Ratio (PSNR) is improved by 1.27% without reducing the Structural Similarity (SSIM). The image after dehazing is more matched with the human visual system, which effectively solves the problem of incomplete image dehazing.
MARG-UNet:基于多模态注意残差群的单幅图像去雾网络
在现实生活中,雾是在特定的天气条件下产生的,这降低了户外图像的色彩保真度和信息完整性。尽管基于卷积神经网络(CNN)的去雾方法已经取得了快速而显著的进展,但图像中仍然存在雾霾不均匀的问题,无法完全去除,去雾后的图像在无雾图像和干净图像之间出现明显的颜色和结构迁移,与人类视觉系统不一致。针对上述问题,本文提出了一种编码器-解码器结构的去雾模型,通过在残差块中嵌入信道关注和像素关注,增强非同质特征提取能力,增强模型的去雾性能。同时,引入多尺度结构相似指数(MS-SSIM)损失函数和平均绝对误差(MAE)损失函数,使去雾图像与干净图像之间的颜色和结构偏差不明显。实验结果表明,在不降低结构相似度(SSIM)的情况下,峰值信噪比(PSNR)提高了1.27%。消雾后的图像更符合人类视觉系统,有效解决了图像消雾不完全的问题。
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