Potencial latente para atualização dos modelos tridimensionais de cobertura das edificações do município do Rio de Janeiro
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modelo de edificio 3D
nivel de detalle
CityGML

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Badolato, I. da S., Abelha Mota, G. L., & Ostwald Pedro da Costa, G. A. (2026). Potencial latente para atualização dos modelos tridimensionais de cobertura das edificações do município do Rio de Janeiro. Coleção Estudos Cariocas (Colección Estudios Cariocas), 13(4), 201. https://doi.org/10.71256/19847203.13.4.201.2025

Resumen

Para demostrar mejoras aplicables al catastro urbano de la ciudad de Río de Janeiro, se investigaron técnicas de vanguardia para el modelado 3D de edificios, centrándose en el detalle geométrico de las cubiertas. Los experimentos sometieron datos de un catastro previo a procesamiento automatizado mediante software de código abierto para aumentar el nivel de detalle de los elementos preexistentes y optimizar recursos, en una iniciativa pionera para las grandes ciudades del Sur Global. Los resultados son útiles para diversos estudios ambientales, al incorporar nuevas características a los registros urbanos y destacar la intervención humana como un elemento esencial para garantizar la calidad.

https://doi.org/10.71256/19847203.13.4.201.2025
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Esta obra está bajo una licencia internacional Creative Commons Atribución 4.0.

Derechos de autor 2026 Irving da Silva Badolato, Guilherme Lucio Abelha Mota, Gilson Alexandre Ostwald Pedro da Costa