Classification of vegetation in an open landscape using full-waveform airborne laser scanner data
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Werner Mücke | Cici Alexander | Balázs Deák | Adam Kania | Hermann Heilmeier | Cici Alexander | W. Mücke | B. Deák | H. Heilmeier | A. Kania
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