4.6 Article

LSCIDMR: Large-Scale Satellite Cloud Image Database for Meteorological Research

Journal

IEEE TRANSACTIONS ON CYBERNETICS
Volume 52, Issue 11, Pages 12538-12550

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2021.3080121

Keywords

Clouds; Satellites; Meteorology; Databases; Annotations; Deep learning; Cloud computing; Benchmark database; cloud image; deep learning; meteorological research; single and multiple labels

Funding

  1. National Key Research and Development Program of China [2018YFE0126100]
  2. Zhejiang Provincial Natural Science Foundation of China [LR21F020002]
  3. Natural Science Foundation of China [41775008, 61976192]

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The article introduces a large-scale cloud image database (LSCIDMR) for meteorological research, providing detailed information on database construction and image annotation, as well as demonstrating evaluation results of deep learning methods based on this database.
People can infer the weather from clouds. Various weather phenomena are linked inextricably to clouds, which can be observed by meteorological satellites. Thus, cloud images obtained by meteorological satellites can be used to identify different weather phenomena to provide meteorological status and future projections. How to classify and recognize cloud images automatically, especially with deep learning, is an interesting topic. Generally speaking, large-scale training data are essential for deep learning. However, there is no such cloud images database to date. Thus, we propose a large-scale cloud image database for meteorological research (LSCIDMR). To the best of our knowledge, it is the first publicly available satellite cloud image benchmark database for meteorological research, in which weather systems are linked directly with the cloud images. LSCIDMR contains 104,390 high-resolution images, covering 11 classes with two different annotation methods: 1) single-label annotation and 2) multiple-label annotation, called LSCIDMR-S and LSCIDMR-M, respectively. The labels are annotated manually, and we obtain a total of 414,221 multiple labels and 40,625 single labels. Several representative deep learning methods are evaluated on the proposed LSCIDMR, and the results can serve as useful baselines for future research. Furthermore, experimental results demonstrate that it is possible to learn effective deep learning models from a sufficiently large image database for the cloud image classification.

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