Generating the Cloud Motion Winds Field from Satellite Cloud Imagery Using Deep Learning Approach
This work addresses the need for more efficient and automated cloud motion wind estimation in meteorology, representing a novel application of deep learning in this domain.
The paper tackled the problem of deriving cloud motion winds from satellite imagery by using a deep learning model to automatically learn motion features and directly output the wind field, achieving efficient prediction even from a single image, which is not possible with traditional methods.
Cloud motion winds (CMW) are routinely derived by tracking features in sequential geostationary satellite infrared cloud imagery. In this paper, we explore the cloud motion winds algorithm based on data-driven deep learning approach, and different from conventional hand-craft feature tracking and correlation matching algorithms, we use deep learning model to automatically learn the motion feature representations and directly output the field of cloud motion winds. In addition, we propose a novel large-scale cloud motion winds dataset (CMWD) for training deep learning models. We also try to use a single cloud imagery to predict the cloud motion winds field in a fixed region, which is impossible to achieve using traditional algorithms. The experimental results demonstrate that our algorithm can predict the cloud motion winds field efficiently, and even with a single cloud imagery as input.