Monitoring of Paddy Rice Varieties Based on the Combination of the Laser-Induced Fluorescence and Multivariate Analysis
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Wei Gong | Lin Du | Shuo Shi | Biwu Chen | Jian Yang | Jia Sun | W. Gong | Jian Yang | Jia Sun | S. Shi | L. Du | Biwu Chen | Zhenbing Zhang | Zhenbing Zhang
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