WHU-Sigma/HyperSIGMA
The official repo for [TPAMI'25] "HyperSIGMA: Hyperspectral Intelligence Comprehension Foundation Model"
This project helps remote sensing professionals accurately interpret complex hyperspectral images. It takes raw hyperspectral data and processes it to extract meaningful insights for various tasks like image denoising or super-resolution. Geoscientists, environmental monitoring specialists, and agricultural analysts who work with satellite or airborne hyperspectral imagery would find this beneficial.
346 stars.
Use this if you need to analyze hyperspectral imagery with state-of-the-art accuracy across diverse tasks, leveraging a powerful foundation model designed for both high-level and low-level interpretations.
Not ideal if your primary data source is standard RGB or multispectral imagery, as this tool is specifically optimized for the unique challenges of hyperspectral data.
Stars
346
Forks
28
Language
Python
License
Apache-2.0
Category
Last pushed
Jan 18, 2026
Commits (30d)
0
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