Can citizen science and social media images support the detection of new invasion sites? A deep learning test case with Cortaderia selloana
Metadatos
Mostrar el registro completo del ítemAutor
Cardoso, Ana Sofia; Malta-Pinto, Eva; Tabik, Siham; August, Tom; Roy, Helen E.; Correia, Ricardo; Vicente, Joana R.; Vaz, Ana SofíaEditorial
Elsevier
Materia
Artificial intelligence Convolutional neural networks Computer vision
Fecha
2024-04-12Referencia bibliográfica
Cardoso, A.S. et. al. 81 (2024) 102602. [https://doi.org/10.1016/j.ecoinf.2024.102602]
Patrocinador
FCT – Portuguese Foundation for Science and Technology through the 2021 PhD Research Studentships (https://d oi.org/10.54499/2021.05426.BD); Citizen Science Initiative through the European Cooperation in Science and Technology (COST) Virtual Mobility Grant [grant no. ECOST- GRANT-CA17122-b65b7335]; Portuguese Science Foundation – FCT – through the 2022 PhD Studentships [grant reference 2022.10833.BD]; Academy of Finland (Grant agreement #348352) and the KONE Foundation (Grant agreement #202101976); contract DL57/2016/CP1440/CT0024. ASV acknowledges support from the FCT – Portuguese Foundation for Science and Technology through the program Stimulus for Scientific Employment – Individual Support (https://doi.org/10.54499/2020.01175.CEECIND/CP1601/CP1649/CT0006), and project ClimateMedia – Understanding climate change phenomena and impacts from digital technology and social media (https://doi.org/10.54499/2022.06965.PTDC).; project SmartFoRest (TED2021-129690B-I00), funded by MCIN/ AEI/10.13039/ 501100011033 and by the European UnionNextGenerationEU/ PRTR)Resumen
Deep learning has advanced the content analysis of digital data, unlocking opportunities for detecting, mapping,
and monitoring invasive species. Here, we tested the ability of open source classification and object detection
models (i.e., convolutional neural networks: CNNs) to identify and map the invasive plant Cortaderia selloana
(pampas grass) in mainland Portugal. CNNs were trained over citizen science images and then applied to social
media content (from Flickr, Twitter, Instagram, and Facebook), allowing to classify or detect the species in over
77% of situations. Images where the species was identified were mapped, using their georeferenced coordinates
and time stamp, showing previously unreported occurrences of C. selloana, and a tendency for the species
expansion from 2019 to 2021. Our study shows great potential from deep learning, citizen science and social
media data for the detection, mapping, and monitoring of invasive plants, and, by extension, for supporting
follow-up management options.