Identification of Sugarcane Bud Based on Image Processing and BP Neural Network
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- Identification of Sugarcane Bud Based on Image Processing and BP Neural Network
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- Conference Chairs:
- M. James C. Crabbe,
- Rita Yi Man Li,
- Rebecca Kechen Dong,
- Otilia Manta,
- Ubaldo Comite
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Association for Computing Machinery
New York, NY, United States
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