Multi-Modal Feature Fusion for Spatial Morphology Analysis of Traditional Villages via Hierarchical Graph Neural Networks

arXiv — cs.CVMonday, November 3, 2025 at 5:00:00 AM

Multi-Modal Feature Fusion for Spatial Morphology Analysis of Traditional Villages via Hierarchical Graph Neural Networks

A recent study highlights the importance of analyzing the spatial morphology of traditional villages, especially in the context of increasing urbanization. As urban areas expand, the unique characteristics of these villages are at risk of disappearing, leading to a homogenized landscape. This research introduces a multi-modal feature fusion approach using hierarchical graph neural networks, aiming to provide a more comprehensive understanding of the factors influencing village morphology. This matters because it could help preserve cultural heritage and inform urban planning strategies.
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