Application of transfer learning and image augmentation technology for tomato pest identification

Sustainable Computing: Informatics and Systems - Tập 33 - Trang 100646 - 2022
Mei-Ling Huang1, Tzu-Chin Chuang1, Yu-Chieh Liao1
1Department of Industrial Engineering & Management, National Chin-Yi University of Technology, 57, Sec. 2, Chung Shan Rd., Taiping, Taichung, Taiwan, ROC

Tài liệu tham khảo

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