Atmospheric turbulence can significantly degrade the quality of images acquired by long-range imaging systems by causing spatially and temporally random fluctuations in the index of refraction of the atmosphere. Variations in the refractive index causes the captured images to be geometrically distorted and blurry. Hence, it is important to compensate for the visual degradation in images caused by atmospheric turbulence. In this paper, we propose a deep learning-based approach for restring a single image degraded by atmospheric turbulence. We make use of the epistemic uncertainty based on Monte Carlo dropouts to capture regions in the image where the network is having hard time restoring. The estimated uncertainty maps are then used to guide the network to obtain the restored image. Extensive experiments are conducted on synthetic and real images to show the significance of the proposed work. Code is available at : https://github.com/rajeevyasarla/AT-Net
翻译:大气扰动可能导致大气折射指数在空间和时间上随机波动,从而大大降低长程成像系统获得的图像质量,造成大气折射指数在空间和时间上随机波动。折射指数的变化导致所捕获的图像发生几何扭曲和模糊不清。因此,必须弥补大气动荡造成图像的视觉退化。在本文中,我们建议采用深层次的学习方法,以恢复因大气动荡而退化的单一图像。我们利用蒙特卡洛辍学造成的特征不确定性,捕捉网络恢复困难的图像中的区域。然后使用估计的不确定性地图指导网络获取恢复的图像。对合成图像和真实图像进行了广泛的实验,以显示拟议工作的重要性。代码可在以下网址查阅:https://github.com/rajeevyasalara/AT-Net。