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Autori principali: Pliego, Miguel Ureña, Marín, Rubén Martínez, Shi, Nianfang, Shibayama, Takeru, Leth, Ulrich, Sacristán, Miguel Marchamalo
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2503.15653
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author Pliego, Miguel Ureña
Marín, Rubén Martínez
Shi, Nianfang
Shibayama, Takeru
Leth, Ulrich
Sacristán, Miguel Marchamalo
author_facet Pliego, Miguel Ureña
Marín, Rubén Martínez
Shi, Nianfang
Shibayama, Takeru
Leth, Ulrich
Sacristán, Miguel Marchamalo
contents This study explores the integration of machine learning into urban aerial image analysis, with a focus on identifying infrastructure surfaces for cars and pedestrians and analyzing historical trends. It emphasizes the transition from convolutional architectures to transformer-based pre-trained models, underscoring their potential in global geospatial analysis. A workflow is presented for automatically generating geospatial datasets, enabling the creation of semantic segmentation datasets from various sources, including WMS/WMTS links, vectorial cartography, and OpenStreetMap (OSM) overpass-turbo requests. The developed code allows a fast dataset generation process for training machine learning models using openly available data without manual labelling. Using aerial imagery and vectorial data from the respective geographical offices of Madrid and Vienna, two datasets were generated for car and pedestrian surface detection. A transformer-based model was trained and evaluated for each city, demonstrating good accuracy values. The historical trend analysis involved applying the trained model to earlier images predating the availability of vectorial data 10 to 20 years, successfully identifying temporal trends in infrastructure for pedestrians and cars across different city areas. This technique is applicable for municipal governments to gather valuable data at a minimal cost.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Transport-Related Surface Detection with Machine Learning: Analyzing Temporal Trends in Madrid and Vienna
Pliego, Miguel Ureña
Marín, Rubén Martínez
Shi, Nianfang
Shibayama, Takeru
Leth, Ulrich
Sacristán, Miguel Marchamalo
Computer Vision and Pattern Recognition
This study explores the integration of machine learning into urban aerial image analysis, with a focus on identifying infrastructure surfaces for cars and pedestrians and analyzing historical trends. It emphasizes the transition from convolutional architectures to transformer-based pre-trained models, underscoring their potential in global geospatial analysis. A workflow is presented for automatically generating geospatial datasets, enabling the creation of semantic segmentation datasets from various sources, including WMS/WMTS links, vectorial cartography, and OpenStreetMap (OSM) overpass-turbo requests. The developed code allows a fast dataset generation process for training machine learning models using openly available data without manual labelling. Using aerial imagery and vectorial data from the respective geographical offices of Madrid and Vienna, two datasets were generated for car and pedestrian surface detection. A transformer-based model was trained and evaluated for each city, demonstrating good accuracy values. The historical trend analysis involved applying the trained model to earlier images predating the availability of vectorial data 10 to 20 years, successfully identifying temporal trends in infrastructure for pedestrians and cars across different city areas. This technique is applicable for municipal governments to gather valuable data at a minimal cost.
title Transport-Related Surface Detection with Machine Learning: Analyzing Temporal Trends in Madrid and Vienna
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.15653