SpecTM: Spectral Targeted Masking for Trustworthy Foundation Models
arXiv cs.AI / 2026/3/24
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要点
- Foundation models for Earth observation are often trained with stochastic masking that may not enforce physics constraints, limiting trustworthiness for predictive uses such as public-health guidance.
- The paper introduces SpecTM (Spectral Targeted Masking), a physics-informed pretraining objective that encourages targeted-band reconstruction using cross-spectral context.
- SpecTM uses an adaptable multi-task self-supervised framework (band reconstruction, bio-optical index inference, and 8-day-ahead temporal prediction) to learn spectrally intrinsic representations.
- On NASA PACE hyperspectral imagery over Lake Erie for microcystin concentration regression, SpecTM reports improved predictive performance (R^2=0.695 current week; R^2=0.620 8-day-ahead) and gains over baselines, including better label efficiency under extreme scarcity.
- Ablation results indicate targeted masking improves R^2 over random masking (+0.037), and the approach improves interpretability and cross-domain physics-informed representation learning.

