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Landscape aesthetics: Spatial modelling and mapping using social media images and machine learning

Arjan Gosal, Guy Ziv

2020Ecological Indicators75 citationsDOIOpen Access PDF

Abstract

Cultural ecosystem services such as aesthetic value are highly context-specific and often present difficulties in their assessment. Here we present a case study in the northern English Protected Area of the Yorkshire Dales National Park. Utilising publicly available images, paired-comparison surveys, probability modelling, machine-learning based text annotations, natural language processing and regression analysis, we developed a spatial model to predict and map landscape aesthetics across the whole site. The predictive model found eighteen significant variables, including the positive role of rural areas, mountainous landforms and vegetation for aesthetic value. Finally, we demonstrate the potential of our approach to varying size datasets and partial paired-comparison matrices, finding a very good agreement with only 20% of paired comparisons. This study demonstrates the use of freely available data and mostly open source tools to ascertain landscape aesthetic value in a large Protected Area.

Topics & Concepts

LandformContext (archaeology)Vegetation (pathology)Computer scienceNatural (archaeology)Natural landscapeValue (mathematics)Spatial contextual awarenessGeographyArtificial intelligenceCartographyMachine learningArchaeologyMedicinePathologyLand Use and Ecosystem ServicesUrban Green Space and HealthDiverse Aspects of Tourism Research
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