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Bragagnolo et al., 2021 - Google Patents

Convolutional neural networks applied to semantic segmentation of landslide scars

Bragagnolo et al., 2021

Document ID
2238211637047707459
Author
Bragagnolo L
Rezende L
Da Silva R
Grzybowski J
Publication year
Publication venue
Catena

External Links

Snippet

Landslides are considered to be among the most alarming natural hazards. Therefore, there is a growing demand for databases and inventories of these events worldwide, since they are a vital resource for landslide risk assessment applications. Given the recent advances in …
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Classifications

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