2023
DOI: 10.3178/hrl.17.77
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A new image segmentation model for precipitation estimation using meteorological satellite infrared images and geographic information

Kansei Fujimoto,
Taichi Tebakari

Abstract: Satellite products are expected to play important roles in water-related management and public welfare, particularly in developing countries. Higher-resolution precipitation products are required to cope with increasingly severe water-related disasters. In this study, we propose a new satellite precipitation estimation algorithm based on deep learning that uses data from multiple satellite infrared (IR) bands and geographic information (e.g. elevation, latitude, and longitude) as input. For the deep learning m… Show more

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