Evaluation of Spectral Indices for Assessing Fire Severity in Australian Temperate Forests
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Bang Nguyen Tran | Mihai A. Tanase | Lauren T. Bennett | Cristina Aponte | M. Tanase | L. Bennett | C. Aponte
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