Integrating pretrained Deep Learning models into GIS workflows for object detection in urban environments

Producción científica: RevistaArtículo de la conferenciarevisión exhaustiva

Resumen

The integration of Deep Learning (DL) techniques into geospatial analysis has significantly enhanced the capacity to automate object detection and feature extraction from highresolution imagery. This study presents a practical approach to incorporating pretrained deep learning models within Geographic Information System (GIS) workflows, specifically using ArcGIS Pro and models available through the ArcGIS Living Atlas. The research focuses on the application of four pretrained models designed for detecting vehicles, counting crowds, extracting building footprints, and identifying trees in urban settings. Each model was integrated into a GIS-based workflow and applied to high-resolution imagery of an urban area to evaluate its usability, processing efficiency, and detection accuracy. The results demonstrate that accurate object-level analyses can be achieved without model training or customization. Precision ( 0.85) and IoU ( 0.72) were achieved in sample-based evaluations. This study contributes a validated and reproducible GeoAI methodology applicable to planning, monitoring, and decisionmaking in complex urban environments.
Idioma originalInglés
Número de artículo31
Páginas (desde-hasta)246-251
Número de páginas6
PublicaciónProceedings of the 2025 IEEE Ninth Ecuador Technical Chapters Meeting (ETCM)
DOI
EstadoPublicada - 25 dic. 2025

Base de Datos Indexada

  • SCOPUS

Campo Detallado del Conocimiento

  • 1-37A

Cuartil Publicación

  • NAQ0

Líneas de Investigación PUCE

  • 11 Diseño, infraestructura y sistemas sociales y ambientales para un hábitat sostenible

Palabras clave

  • Deep Learning
  • GeoAI
  • Pretrained Models
  • Urban Environments
  • GIS

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