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首页> 外文期刊>Journal of visual communication & image representation >From synthetic to natural — single natural image dehazing deep networks using synthetic dataset domain randomization
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From synthetic to natural — single natural image dehazing deep networks using synthetic dataset domain randomization

机译:从合成到自然 — 使用合成数据集域随机化的单个自然图像去雾深度网络

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? 2022 Elsevier Inc.Image dehazing methods aim to solve the problem of poor visibility in images due to haze. Techniques proposed for image dehazing in literature focus on image priors, haze lines or data driven statistical models. Variations of the classical methods relying on prior model or haze line model use no-reference image quality metrics to prove their dehazing performance. Recently developed deep learning models rely on huge amounts of hazy, haze-free pairs for training, and uses PSNR and SSIM like image reconstruction metrics to show their performance. These methods perform poorly on no-reference image quality assessments and also dehazes poorly at the depths of the image. These methods though can be optimized for memory usage and are faster. This work presents a deep learning model (Feature Fusion Attention Network) trained on a domain randomized synthetic dataset generated in simulation. The proposed model achieves the highest scores on blind image assessments through the gradient rationing technique for a deep learning-based approach by a significant margin. The images were evaluated on full-reference metrics as well and obtained favorable results. This approach also yields one of the highest edge sharpness obtained after dehazing. The training procedure adopted to obtain significant gains on real-world dehazing, without using any real-world data is also detailed in this paper.
机译:?2022 Elsevier Inc.图像去雾方法旨在解决因雾霾导致图像可见度差的问题。文献中提出的图像去雾技术侧重于图像先验、雾度线或数据驱动的统计模型。依赖于先前模型或雾度线模型的经典方法的变体使用无参考图像质量指标来证明其去雾性能。最近开发的深度学习模型依赖于大量朦胧、无雾霾的对进行训练,并使用类似 PSNR 和 SSIM 的图像重建指标来显示其性能。这些方法在无参考图像质量评估中表现不佳,并且在图像深处的去雾效果也很差。不过,这些方法可以针对内存使用进行优化,并且速度更快。这项工作提出了一个深度学习模型(特征融合注意力网络),该模型在模拟中生成的域随机合成数据集上训练。所提出的模型通过基于深度学习的方法的梯度配给技术在盲图像评估中取得了最高分。这些图像也根据完整的参考指标进行了评估,并获得了良好的结果。这种方法还可以产生除雾后获得的最高边缘锐度之一。本文还详细介绍了在不使用任何真实世界数据的情况下,在真实世界去雾方面获得显著收益所采用的训练程序。

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