Detecting post-fire burn severity and vegetation recovery using multitemporal remote sensing spectral indices and field-collected composite burn index data in a ponderosa pine forest
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Chengquan Huang | Limin Yang | Xuexia Chen | James E. Vogelmann | Donald O. Ohlen | Carl H. Key | Hua Shi | J. Vogelmann | Limin Yang | Chengquan Huang | Xuexia Chen | D. Ohlen | M. Rollins | Hua Shi | C. H. Key | Matthew Rollins
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