Geostatistical modeling using LiDAR-derived prior knowledge with SPOT-6 data to estimate temperate forest canopy cover and above-ground biomass via stratified random sampling
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Zheng Niu | Wang Li | Xinlian Liang | Cheng Wang | Shuai Gao | Muhammad Shakir | Zengyuan Li | Ni Huang | Z. Niu | Zeng-yuan Li | Xinlian Liang | Cheng Wang | Shuai Gao | N. Huang | Wang Li | Muhammad Shakir
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