Classifying the content of social media images to support cultural ecosystem service assessments using deep learning models
Identificadores
URI: https://hdl.handle.net/10481/105599Metadatos
Mostrar el registro completo del ítemAutor
Cardoso, Ana Sofía; Renna, Francesco; Moreno-Llorca, Ricardo; Alcaraz-Segura, Domingo; Tabik, Siham; Ladle, Richard; Vaz, Ana SofíaEditorial
Elsevier
Fecha
2022-02-01Referencia bibliográfica
Cardoso, A. S., Renna, F., Moreno-Llorca, R., Alcaraz-Segura, D., Tabik, S., Ladle, R. J., & Vaz, A. S. (2022). Classifying the content of social media images to support cultural ecosystem service assessments using deep learning models. Ecosystem Services, 54, 101410.
Patrocinador
ASC is supported by the FCT - Portuguese Foundation for Science and Technology through the 2021 PhD Research Studentships [grant reference 2021.05426.BD]. ASV, DAS, FR, RML and ST acknowledge support from the EarthCul Project (reference PID2020-118041GB-I00), funded by the Spanish Ministry of Science and Innovation. FR acknowledges national funds from the FCT - Portuguese Foundation for Science and Technology through the program Stimulus for Scientific Employment - Individual Support [contract reference CEECIND/01970/2017. RMLL is supported by the collaboration agreement between the Regional Ministry of Environment of Andalucía and the University of Granada for the project “Global Change Observatory of Sierra Nevada”. ST acknowledges support from European Union’s ERDF and University of Granada through project DeepL-ISCO (A-TIC-458-UGR18). RJL is supported by European Union’s Horizon 2020 research and innovation programme grant 854248. ASV acknowledges support from the Ministerio de Ciencia, Innovación y Universidades (Spain) through the 2018 Juan de la Cierva-Formación program [contract reference FJC2018-038131-I] and from the FCT - Portuguese Foundation for Science and Technology through the program Stimulus for Scientific Employment - Individual Support [contract reference 2020.01175.CEECIND/CP1601/CT0009]. This paper contributes to the GEO BON working group on Ecosystem Services.Resumen
Crowdsourced social media data has become popular for assessing cultural ecosystem services (CES). Nevertheless, social media data analyses in the context of CES can be time consuming and costly, particularly when based on the manual classification of images or texts shared by people. The potential of deep learning for automating the analysis of crowdsourced social media content is still being explored in CES research. Here, we use freely available deep learning models, i.e., Convolutional Neural Networks, for automating the classification of natural and human (e.g., species and human structures) elements relevant to CES from Flickr and Wikiloc images. Our approach is developed for Peneda-Gerês (Portugal) and then applied to Sierra Nevada (Spain). For Peneda-Gerês, image classification showed promising results (F1-score ca. 80%), highlighting a preference for aesthetics appreciation by social media users. In Sierra Nevada, even though model performance decreased, it was still satisfactory (F1-score ca. 60%), indicating a predominance of people’s pursuit for cultural heritage and spiritual enrichment. Our study shows great potential from deep learning to assist in the automated classification of human-nature interactions and elements from social media content and, by extension, for supporting researchers and stakeholders to decode CES distributions, benefits, and values.





