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Visibility Enhancement of Scene Images Degraded by Foggy Weather Conditions with Deep Neural Networks

机译:利用深层神经网络增强因有雾天气条件而退化的场景图像的可见性

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Nowadays many camera-based advanced driver assistance systems (ADAS) have been introduced to assist the drivers and ensure their safety under various driving conditions. One of the problems faced by drivers is the faded scene visibility and lower contrast while driving in foggy conditions. In this paper, we present a novel approach to provide a solution to this problem by employing deep neural networks. We assume that the fog in an image can be mathematically modeled by an unknown complex function and we utilize the deep neural network to approximate the corresponding mathematical model for the fog. The advantages of our technique are as follows: (i) its real-time operation and (ii) being based on minimal input, that is, a single image, and exhibiting robustness/generalization for various unseen image data. Experiments carried out on various synthetic images indicate that our proposed technique has the abilities to approximate the corresponding fog function reasonably and remove it for better visibility and safety.
机译:如今,已经引入了许多基于摄像头的高级驾驶员辅助系统(ADAS),以辅助驾驶员并确保他们在各种驾驶条件下的安全。驾驶员面临的问题之一是在有雾的条件下驾驶时场景的能见度降低和对比度降低。在本文中,我们提出了一种新颖的方法,可通过使用深度神经网络为该问题提供解决方案。我们假设图像中的雾可以通过未知的复杂函数进行数学建模,并且我们利用深度神经网络来近似雾的相应数学模型。我们的技术的优点如下:(i)它的实时操作和(ii)基于最小输入,即单个图像,并且对于各种看不见的图像数据表现出鲁棒性/一般性。在各种合成图像上进行的实验表明,我们提出的技术具有合理地近似对应的雾功能并将其删除的功能,从而具有更好的可见性和安全性。

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