Imaging the atmosphere using ground-based sky cameras is a popular approach
to study various atmospheric phenomena. However, it usually focuses on the
daytime. Nighttime sky/cloud images are darker and noisier, and thus harder to
analyze. An accurate segmentation of sky/cloud images is already challenging
because of the clouds' non-rigid structure and size, and the lower and less
stable illumination of the night sky increases the difficulty. Nonetheless,
nighttime cloud imaging is essential in certain applications, such as
continuous weather analysis and satellite communication.
In this paper, we propose a superpixel-based method to segment nighttime
sky/cloud images. We also release the first nighttime sky/cloud image
segmentation database to the research community. The experimental results show
the efficacy of our proposed algorithm for nighttime images.Comment: Accepted in Proc. IEEE International Conference on Image Processing
(ICIP), 201