Locality-Aware Hyperspectral Classification

4 Sep 2023  ·  Fangqin Zhou, Mert Kilickaya, Joaquin Vanschoren ·

Hyperspectral image classification is gaining popularity for high-precision vision tasks in remote sensing, thanks to their ability to capture visual information available in a wide continuum of spectra. Researchers have been working on automating Hyperspectral image classification, with recent efforts leveraging Vision-Transformers. However, most research models only spectra information and lacks attention to the locality (i.e., neighboring pixels), which may be not sufficiently discriminative, resulting in performance limitations. To address this, we present three contributions: i) We introduce the Hyperspectral Locality-aware Image TransformEr (HyLITE), a vision transformer that models both local and spectral information, ii) A novel regularization function that promotes the integration of local-to-global information, and iii) Our proposed approach outperforms competing baselines by a significant margin, achieving up to 10% gains in accuracy. The trained models and the code are available at HyLITE.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Hyperspectral Image Classification Houston HyLITE OA@15perclass 88.49 # 1
Hyperspectral Image Classification Indian Pines HyLITE Overall Accuracy 89.80 # 15
OA@15perclass 89.80 # 2
Hyperspectral Image Classification Pavia University HyLITE OA@15perclass 91.28 # 3

Methods