Identification of Streetscape Compositions
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Keywords

urban morphology
built environment
deep learning
image classification
google street view

How to Cite

FAVARÃO LEÃO, A. L.; QUEIROZ ABONIZIO, H. .; BARBON JÚNIOR, S. .; KANASHIRO, M. Identification of Streetscape Compositions: A Deep Learning Approach. Revista de Morfologia Urbana, [S. l.], v. 8, n. 1, p. e00140, 2020. DOI: 10.47235/rmu.v8i1.140. Disponível em: http://revistademorfologiaurbana.org/index.php/rmu/article/view/140. Acesso em: 15 may. 2024.

Abstract

The environment’s composition can have an impact on human behavior, however, this relationship remains uncertain until the cities' qualities and landscape can be analyzed empirically. Images obtained through Google Street View (GSV) enable a large volume of data for automated assessment of environmental characteristics. Deep learning techniques have advanced in the identification of compositional elements of the built environment. In this sense, this study seeks to investigate and test a procedure for identifying the configuration and composition of the urban landscape, classifying images obtained from GSV through a deep learning approach. From an image dataset of three different neighborhoods in Londrina-PR, a deep learning model for image classification was proposed. The model had a good performance, correctly attributing 87.6% of the samples to the corresponding neighborhoods in the case study. Compositional characteristics were empirically identified, considering the distribution of the samples in the obtained search space. The proposed model contributes to the definition of spatial units as well as in the measurement of environmental qualities, optimizing data collection, expanding sample sizes, and providing objectivity to results. This approach contributes to the expansion of city's analytical scales, identifying compositional and relational patterns in the understanding of elements influent in human behavior.

https://doi.org/10.47235/rmu.v8i1.140
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Copyright (c) 2020 Ana Luiza Favarão Leão, Hugo Queiroz Abonizio, Prof. Dr. Sylvio Barbon Júnior, Profa. Dra. Milena Kanashiro

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