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MultiEarth 2022 -- Multimodal Learning for Earth and Environment Workshop and Challenge

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arxiv 2204.07649 v3 pith:PAPFEBV5 submitted 2022-04-15 cs.CV

MultiEarth 2022 -- Multimodal Learning for Earth and Environment Workshop and Challenge

classification cs.CV
keywords challengemultimodallearningdeforestationearthmultiearthcommunitiesconditions
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The Multimodal Learning for Earth and Environment Challenge (MultiEarth 2022) will be the first competition aimed at the monitoring and analysis of deforestation in the Amazon rainforest at any time and in any weather conditions. The goal of the Challenge is to provide a common benchmark for multimodal information processing and to bring together the earth and environmental science communities as well as multimodal representation learning communities to compare the relative merits of the various multimodal learning methods to deforestation estimation under well-defined and strictly comparable conditions. MultiEarth 2022 will have three sub-challenges: 1) matrix completion, 2) deforestation estimation, and 3) image-to-image translation. This paper presents the challenge guidelines, datasets, and evaluation metrics for the three sub-challenges. Our challenge website is available at https://sites.google.com/view/rainforest-challenge.

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