Quantifying tree mortality in a mixed species woodland using multitemporal high spatial resolution satellite imagery
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Steven P. Brumby | Nate G. McDowell | Chandana Gangodagamage | Steven R. Garrity | N. McDowell | C. Gangodagamage | C. Allen | S. Garrity | S. Brumby | D. Cai | Craig D. Allen | D. Michael Cai | D. M. Cai | Nate G. McDowell | Craig D. Allen
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