Early detection of pine wilt disease in Pinus tabuliformis in North China using a field portable spectrometer and UAV-based hyperspectral imagery

Elsevier BV - Tập 8 - Trang 44 - 2021
Ruozhou Yu1, Lili Ren1, Youqing Luo1
1Key Laboratory for Forest Pest Control, College of Forestry, Beijing Forestry University, Beijing 100083, China

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