Semantic segmentation of methane plumes with hyperspectral machine learning models
Methane is the second most important greenhouse gas contributor to climate change; at the same time its reduction has been denoted as one of the fastest pathways to preventing temperature growth due to its short atmospheric lifetime. In particular, the mitigation of active point-sources associated w...
Päätekijät: | Růžička, V, Mateo-Garcia, G, Gómez-Chova, L, Vaughan, A, Guanter, L, Markham, A |
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Aineistotyyppi: | Journal article |
Kieli: | English |
Julkaistu: |
Springer Nature
2023
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