Ground-based whole sky imagers (WSIs) are being used by researchers in various fields to study the atmospheric events. These ground-based sky cameras capture visible-light images of the sky at regular intervals of time. Owing to the atmospheric interference and camera sensor noise, the captured images often exhibit noise and blur. This may pose a problem in subsequent image processing stages. Therefore, it is important to accurately identify the blurred images. This is a difficult task, as clouds have varying shapes, textures, and soft edges whereas the sky acts as a homogeneous and uniform background. In this paper, we propose an efficient framework that can identify the blurred sky/cloud images. Using a static external marker, our proposed methodology has a detection accuracy of 94\%. To the best of our knowledge, our approach is the first of its kind in the automatic identification of blurred images for ground-based sky/cloud images.
翻译:各个领域的研究人员正在使用陆基全天空成像仪(WSIs)来研究大气事件。这些地面天空照相机定期捕捉天空的可见光图像。由于大气干扰和摄像传感器噪音,所捕捉到的图像往往出现噪音和模糊。这可能在随后的图像处理阶段造成问题。因此,必须准确识别模糊的图像。这是一个困难的任务,因为云层的形状、质地和软边缘各不相同,而天空则是同一和统一的背景。在本文中,我们提出了一个有效的框架,可以识别模糊的天空/云层图像。使用固定的外部标记,我们建议的方法的探测精确度为94 ⁇ 。据我们所知,我们的方法是自动识别地基天空/云层图像的模糊图像的第一种方法。