Establishment of Plot-Yield Prediction Models in Soybean Breeding Programs Using UAV-Based Hyperspectral Remote Sensing
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Xiaoyan Zhang | Jiangang Liu | Jinming Zhao | Guijun Yang | Chunyan Li | Xiaoqing Zhao | Jiqiu Cao | Junyi Gai | Guijun Yang | Jiangang Liu | Jinming Zhao | Xiaoqing Zhao | J. Gai | Xiaoyan Zhang | Jiqiu Cao | Chunyan Li
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