Detecting functional field units from satellite images in smallholder farming systems using a deep learning based computer vision approach: a case study from Bangladesh
Type:
Title:
Detecting functional field units from satellite images in smallholder farming systems using a deep learning based computer vision approach: a case study from Bangladesh
Creator:
Ruoyu Yang;
Ahmed, Z.;
Schulthess, U.;
Kamal, M.;
Rai, R.
Ahmed, Z.;
Schulthess, U.;

Kamal, M.;

Rai, R.
Year:
2020
Copyright:
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Journal:
Remote Sensing Applications: Society and Environment
Journal volume:
20
Place of Publication:
Amsterdam (Netherlands)
Publisher:
Elsevier
Citation:
Detecting functional field units from satellite images in smallholder farming systems using a deep learning based computer vision approach: a case study from Bangladesh. 2020. 20 DOI: 10.1016/j.rsase.2020.100413 Elsevier.