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Airborne multispectral imagery and deep learning for biosecurity surveillance of invasive forest pests in urban landscapes
Journal article   Open access  Peer reviewed

Airborne multispectral imagery and deep learning for biosecurity surveillance of invasive forest pests in urban landscapes

Angus J. Carnegie, Harry Eslick, Paul Barber, Matthew Nagel and Christine Stone
Urban forestry & urban greening, Vol.81, 127859
01/03/2023
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Published (Version of record)CC BY-NC-ND V4.0 Open Access
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UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#13 Climate Action
#15 Life on Land

Source: InCites

Abstract

Convoluted neural networks Early detection surveillance Invasive alien species Remote sensing Sentinel trees Tree species discrimination

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