AICCA: AI-driven Cloud Classification Atlas
Takuya Kurihana, Elisabeth Moyer, Ian Foster

TL;DR
This paper introduces AICCA, an unsupervised AI-based cloud classification atlas that clusters 22 years of satellite imagery into meaningful cloud classes, aiding climate research and understanding cloud behavior.
Contribution
It presents a novel convolutional neural network approach combining autoencoders and clustering to classify clouds without prior labels, creating a comprehensive cloud atlas from massive satellite data.
Findings
Generated 42 cloud classes from 22 years of satellite data
Captured meaningful geographic and textural distinctions among clouds
Facilitated insights into cloud patterns and evolution
Abstract
Clouds play an important role in the Earth's energy budget and their behavior is one of the largest uncertainties in future climate projections. Satellite observations should help in understanding cloud responses, but decades and petabytes of multispectral cloud imagery have to date received only limited use. This study reduces the dimensionality of satellite cloud observations by grouping them via a novel automated, unsupervised cloud classification technique by using a convolutional neural network. Our technique combines a rotation-invariant autoencoder with hierarchical agglomerative clustering to generate cloud clusters that capture meaningful distinctions among cloud textures, using only raw multispectral imagery as input. Thus, cloud classes are defined without reliance on location, time/season, derived physical properties, or pre-designated class definitions. We use this approach…
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Taxonomy
TopicsAtmospheric and Environmental Gas Dynamics · Atmospheric aerosols and clouds · Remote Sensing in Agriculture
