Session | |
209: Advancements of AI in Human Geography
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Session Abstract | |
The integration of Artificial Intelligence (AI) into human geography has opened new horizons for spatial research. AI offers innovative tools and methodologies that allows to adress new and complex geographical questions. This session aims to convene researchers at the forefront of this interdisciplinary nexus to share recent developments, theoretical advancements, and empirical findings. In the past decade, breakthroughs in machine learning, deep learning, and data analytics have significantly impacted the ways in which spatial data is collected, processed, and interpreted. AI techniques are enhancing our capabilities to analyze large-scale geospatial datasets, improve predictive modeling, and uncover patterns not readily apparent through traditional methods. These advancements are reshaping research in physical geography, human geography, environmental studies, and urban planning. We invite scholarly contributions that: -Present novel AI methodologies for spatial data analysis and geovisualization. -Explore machine learning applications in urban and regional studies, cultural landscape analysis and environmental monitoring. -Demonstrate deep learning techniques for remote sensing and image classification. -Examine AI-driven approaches in human geography, such as social media geodata analysis and spatial behavior modeling. -Discuss conceptual and methodological challenges in integrating AI with geographic research. -Address ethical considerations and biases inherent in AI applications within geography. | |
Presentations | |
GeoAI and Spatial Analysis: A New Frontier for Sustainability and Urban Inequalities Università di Macerata, Italy Geospatial Artificial Intelligence (GeoAI) represents a transformative force in spatial analysis, combining artificial intelligence with geospatial data to address critical urban and environmental challenges. This study seeks to answer the research question: how can GeoAI contribute to reducing territorial inequalities and promoting more sustainable cities? The research examines GeoAI applications in urban planning, infrastructure monitoring, and environmental risk management, highlighting its potential to revolutionise how spatial data is analysed and used for decision-making. The theoretical approach is grounded in an interdisciplinary framework, synthesising insights from human geography, computational sciences, and sustainability studies. It draws on concepts of spatial justice and resilience to explore the socio-economic and ecological dimensions of GeoAI’s integration into urban systems. By bridging these fields, the study aims to uncover the transformative capacity of GeoAI in addressing disparities between urban centres and peripheral regions. Methodologically, the study employs a mixed-method approach. Quantitative analysis leverages advanced machine learning models, including deep learning algorithms for satellite image processing, spatial data visualisation, and predictive modelling. These techniques are applied to big geodata to uncover patterns and dynamics in urban development and environmental change. Complementing this, qualitative methods involve case studies and a critical literature review to explore ethical implications, operational challenges, and governance frameworks for GeoAI adoption. Data sources include open-access geospatial datasets and high-resolution satellite imagery from programs such as Copernicus, ensuring robust and diverse data inputs. The findings are expected to contribute to the growing body of research on GeoAI’s role in shaping urban futures. The study highlights opportunities for GeoAI to optimise urban planning, enhance disaster preparedness, and address territorial inequalities. However, it also underscores the need to address challenges, such as data biases, accessibility issues, and regulatory gaps. By critically assessing these dimensions, this research seeks to provide actionable insights for policymakers and practitioners aiming to harness GeoAI for sustainable and inclusive urban development. Application of AI for Forest Ecosystem Dynamics evaluation and Predictive Modeling in Central Europe Charles university, Czech Republic Land-use/land-cover (LULC) change prediction depends on input variables, but the importance of each variable may vary based on geographical location, time, and the targeted changes in the study area. Most environmental variables are derived from remote sensing data. With advancements in artificial intelligence (AI), particularly machine learning (ML), various change detection models have been developed that effectively assess the importance of input variables based on these criteria. Such weightings are critical for layer embedding in Markov models to predict future changes. In this research, we predict land-use changes over a 30-year period using the Land Change Modeler (LCM) with different transitional models, including Multi-Layer Perceptron (MLP), Decision Forest (DF), and Support Vector Machine (SVM), for the Krkonoše Protected Area in the Czech Republic. We utilized satellite images from the TM and ETM+ sensors of Landsat 5 and 7 and the OLI sensor of Landsat 8 for the years 1990, 2000, 2010, and 2020, respectively. Additionally, the ASTER Digital Elevation Model (DEM) and spatial data related to human and natural factors were incorporated as comprehensive input variables for our transitional ML models. Satellite images were classified in Google Earth Engine into eleven classes. The LCM Markov model predicted land-use changes, comparing our applied ML models. According to the results, from 1990 to 2020, the classes of deciduous, coniferous, and mixed forests increased respectively by +0.74%, +7.11%, and +6.15%. Conversely, transition forests and clearings, areas with sparse vegetation, decreased by -9.81% and -1.20%, respectively. Land-use change predictions for 2020, generated by the applied models, were validated against the actual 2020 land-use map using the overall accuracy method. The models achieved accuracy levels of MLP: 83.38%, SVM: 86.72%, and DF: 89.88%. This study demonstrates the effectiveness of combining machine learning techniques with the LCM Markov model for LULC prediction. The findings emphasize the dynamic nature of forest ecosystems and the need for accurate models to ensure sustainable resource management. Unveiling Urban Dynamics: Extract social structures from Street View Imagery with Machine Learning 1ÖAW, Austria; 2ÖAW, Austria The MOSAIK project introduces an innovative framework to capture and analyze socioeconomic transformations in Vienna at the micro level. By harnessing diverse image data—from Google Street View and Kappazunder to aerial photography—we employ AI-based techniques to automatically extract urban features such as facade structures, roof conditions, and ground floor uses. Neural networks detect building facades and roofs, while supervised machine learning models classify ground-level activities. This enables the comprehensive mapping of diverse built-functional areas across the entire urban space: the usage patterns of ground floor zones, the structural condition of facades, as well as roof conditions and attic expansions. Geostatistical analyses, including hotspot and cluster detection, further delineate areas of urban appreciation and depreciation. By integrating these spatial metrics with socioeconomic indicators like education, household income, and migration background it obtains a comprehensive overview of the socioeconomic transformation in Vienna. Moreover, MOSAIK aims to clarify whether social structures and dynamics can be automatically extracted from image data. This presentation will discuss our methodology, first findings, and the broader implications of street view image analysis for human geography. |