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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
2023
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Published (Version of Record)CC BY-NC-ND V4.0 Open Access

Abstract

Convoluted neural networks Early detection surveillance Invasive alien species Remote sensing Sentinel trees Tree species discrimination
Urban and peri-urban trees in major cities provide a gateway for exotic pests and diseases (hereafter “pests”) to establish and spread into new countries. Consequently, they can be used as sentinels for early detection of exotic pests that could threaten commercial, environmental and amenity forests. Biosecurity surveillance for exotic forest pests relies on monitoring of host trees — or sentinel trees — around high-risk sites, such as airports and seaports. There are few publicly available spatial databases of urban street and park trees, so locating and mapping host trees is conducted via ground surveys. This is time-consuming and resource-intensive, and generally does not provide complete coverage. Advances in remote sensing technologies and machine learning provide an opportunity for semi-automation of tree species mapping to assist in biosecurity surveillance. In this study, we obtained high resolution (≥12 cm), 10-band, multispectral imagery using the ArborCam™ system mounted to a fixed-wing aircraft over Sydney, Australia. We mapped 630 Pinus trees and 439 Platanus trees on-foot, validating their exact location on the airborne imagery using an in-field mapping app. Using a machine learning, convolutional neural network workflow, we were able to classify the two target genera with a high level of accuracy in a complex urban landscape. Overall accuracy was 92.1% for Pinus and 95.2% for Platanus, precision (user’s accuracy) ranged from 61.3% to 77.6%, sensitivity (producer’s accuracy) ranged from 92.7% to 95.2%, and F1-score ranged from 74.6% to 84.4%. Our study validates the potential for using multispectral imagery and machine learning to increase efficiencies in tree biosecurity surveillance. We encourage biosecurity agencies to consider greater use of this technology.

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UN Sustainable Development Goals (SDGs)

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#11 Sustainable Cities and Communities
#15 Life on Land

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Citation topics
3 Agriculture, Environment & Ecology
3.32 Entomology
3.32.1539 Bark Beetle Ecology
Web Of Science research areas
Environmental Studies
Forestry
Plant Sciences
Urban Studies
ESI research areas
Environment/Ecology
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