Estimation of LAI in Winter Wheat from Multi-Angular Hyperspectral VNIR Data: Effects of View Angles and Plant Architecture
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Wenjiang Huang | Zheng Niu | Wang Li | Hanyue Chen | Liming Zhang | Shihe Xing | Z. Niu | Wenjiang Huang | Wang Li | Hanyue Chen | Liming Zhang | S. Xing
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