Rice nitrogen nutrition monitoring classification method based on the convolution neural network model: Direct detection of rice nitrogen nutritional status
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Qian Zhai | Jing Hua | Jizhong Liu | Chun Ye | Shuang Li | Zhiming Guo | Ruzhi Chang
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