Pancakerr/HybridSN
A personal pytorch-based implement of HybridSN by Jupyter Notebook
This tool helps researchers and scientists analyze hyperspectral images to identify and classify different materials or land cover types within a scene. You input raw hyperspectral image data, and it outputs a classified map showing distinct regions or objects. It's designed for users in remote sensing, geology, agriculture, or environmental monitoring.
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Use this if you need to accurately categorize areas in complex hyperspectral images, distinguishing between subtle differences in spectral signatures and spatial patterns.
Not ideal if you are working with standard RGB images or do not have access to rich hyperspectral data.
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Jupyter Notebook
License
MIT
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Last pushed
Mar 24, 2022
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