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Automated photo content classification of Instagram posts to identify patterns of human uses in peri-urban protected areas: A case study from Vienna, Austria

  • Blue and green spaces in cities provide essential ecosystem services to their inhabitants, including recreational and experiential opportunities. Their importance became further highlighted during the COVID-19 pandemic as urbanites sought to relieve some of the associated pressure. However, urban ecosystems are threatened by degradation and pollution, but also by other activities, including recreation. In this context, protected areas face the challenge of balancing visitor interests with conservation objectives, particularly in peri-urban areas. Social media provides an opportunity to analyse human activities in such areas. This study investigates spatial and temporal patterns in Instagram photos at three case study sites in Vienna, Lainzer Tiergarten, Lobau, and Nussberg with different protection statuses between 2018 and 2022. Automated content labeling using Google's Cloud Vision API and subsequent classification identified 19 clusters from 54,751 downloaded photos. Seasonal variations were observed, such as the prevalence of Plant and Insect photos in spring and summer, and Landscape content in autumn and winter. The COVID-19 pandemic coincided with and contributed to an increase in user activity, but seasonal trends were unaffected. Site-specific patterns also emerged, with Panoramas dominating in Nussberg, the Riverscape characterizing Lobau, and Woodlands dominating in Lainzer Tiergarten. Our findings demonstrate that automated social media photo content analysis can capture spatial and temporal variations in visitor behavior and landscape preferences, providing valuable insights for targeted visitor management and the establishment of conservation strategies in peri-urban ecosystems. Integrating these analyses with other methods, such as surveys or mobile phone tracking, can provide a more comprehensive understanding of human-environment interactions.

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Author:Martin Palt, Michael Binder, Anna Huber, Christa Hainz-Renetzeder, Alice Wanner, Lena Ortega Menjivar, Nur Banu Ozcelik, Friedrich Leisch, Florian Borgwardt, Nina N. Kaiser, Stefan Stoll, Rafaela SchineggerORCiD
URN:urn:nbn:de:hbz:tr5-11008
DOI:https://doi.org/10.1016/j.ufug.2025.129029
Parent Title (English):Urban Forestry & Urban Greening
Publisher:Elsevier
Document Type:Article (specialist journals)
Language:English
Date of OPUS upload:2026/01/20
Date of first Publication:2025/08/25
Publishing University:Hochschule Trier
Release Date:2026/01/20
Tag:Human uses; Nature perception; Nature protection areas; Photo content analysis; Recreational activity; Social media data
GND Keyword:Umweltschutz; Stadtökologie; Ökosystem; Stadt; Ökosystemdienstleistung; Social Media; Datenanalyse; Österreich; Wien; COVID-19; Pandemie
Volume:113
Article Number:129029
First Page:1
Last Page:13
Departments:FB Umweltplanung/-technik (UCB)
Dewey Decimal Classification:3 Sozialwissenschaften / 30 Sozialwissenschaften, Soziologie
5 Naturwissenschaften und Mathematik / 57 Biowissenschaften; Biologie
Licence (German):License LogoCreative Commons - CC BY - Namensnennung 4.0 International

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