4.7 Article

Data-Driven Cloud Clustering via a Rotationally Invariant Autoencoder

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TGRS.2021.3098008

Keywords

Clouds; Satellites; Protocols; Feature extraction; Unsupervised learning; Supervised learning; MODIS; Autoencoder; cloud classification (CLDCLASS); clustering; moderate resolution imaging spectroradiometer (MODIS) rotation-invariant loss; unsupervised learning

Funding

  1. AI for Science Program of the Center for Data and Computing at the University of Chicago
  2. Center for Robust Decision-making on Climate and Energy Policy (RDCEP) through NSF [SES-1463644]
  3. U.S. Department of Energy, Office of Science, Advanced Scientific Computing Research [DE-AC02-06CH11357]
  4. Air Force Office of Scientific Research (AFOSR) [FA9550-18-1-0166]
  5. Department of Energy (DOE) [DE-AC02-06CH11357]
  6. NSF [OAC-1934637, DMS-1930049]

Ask authors/readers for more resources

An automated rotation-invariant cloud clustering method utilizing deep learning technology is proposed to organize cloud imagery within large datasets without predefined classes. Evaluation results suggest that the resulting novel cloud clusters capture meaningful aspects of cloud physics, exhibit spatial coherence, and are invariant to image orientations.
Advanced satellite-borne remote sensing instruments produce high-resolution multispectral data for much of the globe at a daily cadence. These datasets open up the possibility of improved understanding of cloud dynamics and feedback, which remain the biggest source of uncertainty in global climate model projections. As a step toward answering these questions, we describe an automated rotation-invariant cloud clustering (RICC) method that leverages deep learning autoencoder technology to organize cloud imagery within large datasets in an unsupervised fashion, free from assumptions about predefined classes. We describe both the design and implementation of this method and its evaluation, which uses a sequence of testing protocols to determine whether the resulting clusters: 1) are physically reasonable (i.e., embody scientifically relevant distinctions); 2) capture information on spatial distributions, such as textures; 3) are cohesive and separable in latent space; and 4) are rotationally invariant (i.e., insensitive to the orientation of an image). Results obtained when these evaluation protocols are applied to RICC outputs suggest that the resultant novel cloud clusters capture meaningful aspects of cloud physics, are appropriately spatially coherent, and are invariant to orientations of input images. Our results support the possibility of using an unsupervised data-driven approach for automated clustering and pattern discovery in cloud imagery.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available