Drone-Based Identification and Monitoring of Two Invasive Alien Plant Species in Open Sand Grasslands by Six RGB Vegetation Indices

Author:

Bakacsy László1ORCID,Tobak Zalán2ORCID,van Leeuwen Boudewijn2ORCID,Szilassi Péter2ORCID,Biró Csaba3,Szatmári József2ORCID

Affiliation:

1. Department of Plant Biology, University of Szeged, Közép Fasor 52, H-6727 Szeged, Hungary

2. Department of Geoinformatics, Physical and Environmental Geography, University of Szeged, Egyetem utca 2-6, H-6722 Szeged, Hungary

3. Kiskunsag National Park Directores, Liszt Ferenc utca 19, H-6000 Kecskemét, Hungary

Abstract

Today, invasive alien species cause serious trouble for biodiversity and ecosystem services, which are essential for human survival. In order to effectively manage invasive species, it is important to know their current distribution and the dynamics of their spread. Unmanned aerial vehicle (UAV) monitoring is one of the best tools for gathering this information from large areas. Vegetation indices for multispectral camera images are often used for this, but RGB colour-based vegetation indices can provide a simpler and less expensive solution. The goal was to examine whether six RGB indices are suitable for identifying invasive plant species in the QGIS environment on UAV images. To examine this, we determined the shoot area and number of common milkweed (Asclepias syriaca) and the inflorescence area and number of blanket flowers (Gaillardia pulchella) as two typical invasive species in open sandy grasslands. According to the results, the cover area of common milkweed was best identified with the TGI and SSI indices. The producers’ accuracy was 76.38% (TGI) and 67.02% (SSI), while the user’s accuracy was 75.42% (TGI) and 75.12% (SSI), respectively. For the cover area of blanket flower, the IF index proved to be the most suitable index. In spite of this, it gave a low producer’s accuracy of 43.74% and user’s accuracy of 51.4%. The used methods were not suitable for the determination of milkweed shoot and the blanket flower inflorescence number, due to significant overestimation. With the methods presented here, the data of large populations of invasive species can be processed in a simple, fast, and cost-effective manner, which can ensure the precise planning of treatments for nature conservation practitioners.

Funder

National Research, Development and Innovation Office of Hungary

Ministry for Innovation and Technology, Hungary

WATERatRISK project

Ministry of Human Capacities

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Aerospace Engineering,Information Systems,Control and Systems Engineering

Reference72 articles.

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2. Kettunen, M., Genovesi, P., Gollasch, S., Pagad, S., Starfinger, U., ten Brink, P., and Shine, C. (2009). Technical Support to EU Strategy on Invasive Alien SPECIES (IAS), Institute for European Environmental Policy (IEEP).

3. European Commission (2014). Regulation (EU) No 1143/2014 of the European Parliament and of the Council 22 October 2014 on the Prevention and Management of the Introduction and Spread of Invasive Alien Species. Off. J. Eur. Union., L174, 511. Available online: https://www.eea.europa.eu/policy-documents/ec-2014-regulation-eu-no.

4. Economic Costs of Invasive Alien Species Across Europe;Haubrock;NeoBiota,2021

5. Is it Worth the Effort? Spread and Management Success of Invasive Alien Plant Species in a Central European National Park;Schiffleithner;NeoBiota,2016

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