Mapping canopy defoliation by herbivorous insects at the individual tree level using bi-temporal airborne imaging spectroscopy and LiDAR measurements
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Feng Zhao | Iurii Shendryk | Shawn P. Serbin | Philip E. Dennison | Ran Meng | Bruce D. Cook | Ryan P. Hanavan | P. Dennison | B. Cook | R. Meng | S. Serbin | Feng R. Zhao | I. Shendryk | A. Rickert | R. Hanavan | Amanda Rickert
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