彩色图像去雾

Akshay Dudhane, K. Biradar, Prashant W. Patil, Praful Hambarde, S. Murala
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引用次数: 26

摘要

在恶劣天气下拍摄的图像质量经常受到色差和由于大气颗粒的存在而造成的低能见度的影响。在现有的图像去雾方法中,色彩平衡的恢复往往被忽略。本文提出了一种彩色端到端图像去雾网络,该网络可以在给定的彩色模糊图像中恢复颜色平衡,从而恢复无雾图像。该网络包括1)霾色校正(HCC)模块和2)能见度改善(VI)模块。提出的HCC模块提供了对每个颜色通道所需的关注,并生成了色彩平衡的模糊图像。而本文提出的VI模块通过新颖的初始注意块对色彩平衡的模糊图像进行处理,恢复无雾图像。我们还提出了一种新的方法来生成大规模的彩色合成模糊图像数据库。一个消融研究已经进行,以证明不同的因素对所提出的网络的性能的影响,用于图像去雾。三个基准合成数据集被用于对所提出的网络进行定量分析。在不同天气条件下拍摄的一组真实朦胧图像的视觉结果证明了所提出的方法对彩色图像去雾的有效性。
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Varicolored Image De-Hazing
The quality of images captured in bad weather is often affected by chromatic casts and low visibility due to the presence of atmospheric particles. Restoration of the color balance is often ignored in most of the existing image de-hazing methods. In this paper, we propose a varicolored end-to-end image de-hazing network which restores the color balance in a given varicolored hazy image and recovers the haze-free image. The proposed network comprises of 1) Haze color correction (HCC) module and 2) Visibility improvement (VI) module. The proposed HCC module provides required attention to each color channel and generates a color balanced hazy image. While the proposed VI module processes the color balanced hazy image through novel inception attention block to recover the haze-free image. We also propose a novel approach to generate a large-scale varicolored synthetic hazy image database. An ablation study has been carried out to demonstrate the effect of different factors on the performance of the proposed network for image de-hazing. Three benchmark synthetic datasets have been used for quantitative analysis of the proposed network. Visual results on a set of real-world hazy images captured in different weather conditions demonstrate the effectiveness of the proposed approach for varicolored image de-hazing.
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