基于深度学习的近实时图像去雾系统空气光估计

Yücel ÇİMTAY
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摘要

雾霾可以由自然或人工因素造成,它降低了视觉质量和人的视线距离。可见的物体变得不可见或几乎不可见。利用大气光散射(ALS)模型模拟了由雾霾引起的退化函数的物理性质。因此,从单幅模糊图像中,通过使用适当的方法,可以恢复原始场景。在解决ALS函数的除雾方法中,基本上有两步:第一步是对图像捕获时存在的空气光进行估计,第二步是对相应场景的传输进行估计。四叉树分解是空气光估计最有效的方法之一。试验表明,该方法的除雾时间大部分用于估算空气光。对于高清晰度(HD)图像,空气光的估计耗费大量时间。因此,在传统硬件上实现实时或接近实时的除雾是不可能的。本文提出了一种新的卷积神经网络模型,可直接从雾霾图像中快速估计空气光。然后利用估算的空气光与大气光散射模型对恢复图像进行处理。结果表明,在图像分辨率为(640x480)和(1920x1080)的情况下,与基于ALS的去雾方法中使用的四叉树分解方法相比,时间成本分别降低了56.0%和65%,且不影响去雾图像的视觉质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Air Light With Deep Learning for a Near Real-Time Image Dehazing System
Haze which can be created by natural or synthetic factors, degrades the visual quality and human sight distance. Visible objects become invisible or scarcely visible. The physics of the degrading function due to haze has been modelled by Atmospheric Light Scattering (ALS) Model. Therefore, from a single hazy image, by using proper methods, it is possible to recover the original scene. In dehazing methods, which solve the ALS function, there are basically two steps: First one is the estimation of the air light present at the time of the image capturing and the second one is the estimation of transmission of the corresponding scene. One of the most effective method which is used for air light estimation is QuadTree decomposition. For this method, tests show that the most amount of the dehazing time is consumed to estimate the air light. For the case of High Definition (HD) imagery, the estimation of air light consumes huge time. Therefore, it cannot be possible to achieve a real-time or near real-time dehazing on traditional hardware. In this study, a novel convolutional neural network model is developed to estimate the air light directly from the hazy image quickly. The estimated air light then is used with Atmospheric Light Scattering model to handle the recovered image. Results show that the time cost is reduced by 56.0% and 65% for image resolutions of (640x480) and (1920x1080) compared to the QuadTree Decomposition method used in ALS based dehazing methods, without losing the visual quality of the dehazed image.
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