SEGMENTATION OF SINGLE STANDING DEAD TREES IN HIGH-RESOLUTION AERIAL IMAGERY WITH GENERATIVE ADVERSARIAL NETWORK-BASED SHAPE PRIORS
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Jacquelyn A. Shelton | M. Heurich | P. Polewski | J. Shelton | W. Yao | W. Yao | M. Heurich | Przemyslaw Polewski
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