Multi-Modal Deep Learning with Sentinel-3 Observations for the Detection of Oceanic Internal Waves
Presentation given by Lukas Drees at the ISPRS Congress 2020
Drees, L., Kusche, J., & Roscher, R. (2020). Multi-Modal Deep Learning with Sentinel-3 Observations for the Detection of Oceanic Internal Waves. ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences, 2, 813-820.
Видео Multi-Modal Deep Learning with Sentinel-3 Observations for the Detection of Oceanic Internal Waves канала Ribana Roscher
Drees, L., Kusche, J., & Roscher, R. (2020). Multi-Modal Deep Learning with Sentinel-3 Observations for the Detection of Oceanic Internal Waves. ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences, 2, 813-820.
Видео Multi-Modal Deep Learning with Sentinel-3 Observations for the Detection of Oceanic Internal Waves канала Ribana Roscher
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