A review of deep learning techniques used in agriculture

Ecological Informatics - Tập 77 - Trang 102217 - 2023
Ishana Attri1, Lalit Kumar Awasthi1, Teek Parval Sharma1, Priyanka Rathee2
1Computer Science and Engineering, NIT, Hamirpur 177005, H.P, India
2Computer Science and Engineering, NIT, Hamirpur 177005, India

Tài liệu tham khảo

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