Demertzis et al., 2020 - Google Patents
GeoAI: A model-agnostic meta-ensemble zero-shot learning method for hyperspectral image analysis and classificationDemertzis et al., 2020
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- 13540329519634396485
- Author
- Demertzis K
- Iliadis L
- Publication year
- Publication venue
- Algorithms
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Deep learning architectures are the most effective methods for analyzing and classifying Ultra-Spectral Images (USI). However, effective training of a Deep Learning (DL) gradient classifier aiming to achieve high classification accuracy, is extremely costly and time …
- 238000010191 image analysis 0 title abstract description 12
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