EO-WM: A Physically Informed World Model for Probabilistic Earth Observation Forecasting
EO-WM is a video diffusion transformer for multispectral Earth Observation forecasting that incorporates physically informed conditioning frameworks to better capture weather-drive…
Hugging Face · Daily Papers
·Junwei Luo, Shuai Yuan
·
·▲ 2 upvotes
Este artigo está em destaque na seleção diária de papers do Hugging Face, curada pela comunidade de pesquisa em IA.
Autores: Junwei Luo, Shuai Yuan, Zhenya Yang, Yansheng Li, Zhe Liu, Hengshuang Zhao
- 2 upvotes da comunidade
- Temas: video diffusion transformer, multispectral EO forecasting, physically informed conditioning framework, meteorological forcing, climatological baseline, weather anomalies
Resumo
Resumo original (em inglês), extraído do paper:
EO-WM is a video diffusion transformer for multispectral Earth Observation forecasting that incorporates physically informed conditioning frameworks to better capture weather-driven uncertainties in land-surface dynamics.Onde ler
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