Using Landsat Spectral Indices in Time-Series to Assess Wildfire Disturbance and Recovery
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Andrew K. Skidmore | Simon D. Jones | Mariela Soto-Berelov | Andrew Haywood | Samuel Hislop | Trung H. Nguyen | A. Skidmore | A. Haywood | T. Nguyen | S. Hislop | M. Soto‐Berelov | S. Jones
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