Abstract
Hyperspectral images (HSIs) with abundant spectra and high spatial resolution can satisfy the demand for the classification of adjacent homogeneous regions and accurately determine their specific land-cover classes. Due to the potentially large variance within the same class in hyperspectral images, classifying HSIs with limited training samples (i.e., few-shot HSI classification) has become especially difficult. To solve this issue without adding training costs, we propose an ensemble of meta-optimizers that were generated one by one through utilizing periodic annealing on the learning rate during the meta-training process. Such a combination of meta-learning and ensemble learning demonstrates a powerful ability to optimize the deep network on few-shot HSI training. In order to further improve the classification performance, we introduced a novel update integration process to determine the most appropriate update for network parameters during the model training process. Compared with popular human-designed optimizers (Adam, AdaGrad, RMSprop, SGD, etc.), our proposed model performed better in convergence speed, final loss value, overall accuracy, average accuracy, and Kappa coefficient on five HSI benchmarks in a few-shot learning setting.
| Original language | English |
|---|---|
| Article number | 2988 |
| Journal | Remote Sensing |
| Volume | 16 |
| Issue number | 16 |
| DOIs | |
| Publication status | Published - 14 Aug 2024 |
Keywords
- Agriculture
- Environmental technology portfolio
- International Development
- Nation Relations
- data-driven environment (DDE)
- update integration
- meta-learning
- few-shot HSI classification
- meta-optimizer ensemble
ASJC Scopus subject areas
- General Earth and Planetary Sciences
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