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Numéro spécial du CJRS, Volume 47 Numéro 2

Par 10 août 2021#!31lun, 03 Oct 2022 17:30:39 -0400-04:003931#31lun, 03 Oct 2022 17:30:39 -0400-04:00-5America/Toronto3131America/Torontox31 03pm31pm-31lun, 03 Oct 2022 17:30:39 -0400-04:005America/Toronto3131America/Torontox312022lun, 03 Oct 2022 17:30:39 -04003053010pmlundi=371#!31lun, 03 Oct 2022 17:30:39 -0400-04:00America/Toronto10#octobre 3rd, 2022#!31lun, 03 Oct 2022 17:30:39 -0400-04:003931#/31lun, 03 Oct 2022 17:30:39 -0400-04:00-5America/Toronto3131America/Torontox31#!31lun, 03 Oct 2022 17:30:39 -0400-04:00America/Toronto10#Sans commentaires1 lecture minimale

Deep Learning for Environmental
Applications of Remote Sensing Data

Inspired by human brains’ great potential for object and pattern recognition, deep learning (DL) has drawn attention within the remote sensing community over the past few years. Supervised convolutional neural networks (CNNs), recurrent neural networks (RNNs), unsupervised auto-encoders (AE), deep belief networks (DBNs), and generative adversarial networks (GANs) are the state-of-the-art DL methods applied for remote sensing imagery. DL methods’ popularity is attributed to their deep multilayer structure, allowing the extraction of robust, invariant, and high-level features of data and their end-to-end training scheme. In other words, these methods have the capability to learn a series of abstract hierarchical features from raw input data and to provide a final, task-specific output, thus removing heuristic feature engineering design. Continue reading …

Éditeurs invités
Masoud Mahdianpari, Saeid Homayouni & Samuel Foucher
https://www.tandfonline.com/doi/full/10.1080/07038992.2021.1931786