CNN Profiler on Polar Coordinate Images for Tropical Cyclone Structure Analysis
Boyo Chen, Buo-Fu Chen, Chun-Min Hsiao

TL;DR
This paper introduces a CNN-based method for objectively profiling tropical cyclone structures from satellite images using polar coordinates, supported by a new benchmark dataset and domain knowledge integration.
Contribution
It presents a novel CNN approach on polar-coordinate images for TC structure profiling and releases a benchmark dataset to advance research in this area.
Findings
Polar-coordinate CNN model effectively captures TC structure.
The proposed model outperforms Cartesian-coordinate approaches.
The dataset enables further research in TC structural analysis.
Abstract
Convolutional neural networks (CNN) have achieved great success in analyzing tropical cyclones (TC) with satellite images in several tasks, such as TC intensity estimation. In contrast, TC structure, which is conventionally described by a few parameters estimated subjectively by meteorology specialists, is still hard to be profiled objectively and routinely. This study applies CNN on satellite images to create the entire TC structure profiles, covering all the structural parameters. By utilizing the meteorological domain knowledge to construct TC wind profiles based on historical structure parameters, we provide valuable labels for training in our newly released benchmark dataset. With such a dataset, we hope to attract more attention to this crucial issue among data scientists. Meanwhile, a baseline is established with a specialized convolutional model operating on polar-coordinates.…
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Taxonomy
TopicsTropical and Extratropical Cyclones Research · Ocean Waves and Remote Sensing · Solar and Space Plasma Dynamics
