A system for monitoring the environment of historic places using convolutional neural network methodologies

This work aims to contribute to better understanding the use of public street spaces. (1) Background: In this sense, with a multidisciplinary approach, the objective of this work is to propose an experimental and reproducible method on a large scale. (2) Study area: The applied methodology uses artificial intelligence to analyze Google Street View (GSV) images at street level. (3) Method: The purpose is to validate a methodology that allows us to characterize and quantify the use (pedestrians and cars) of some squares in Rome belonging to different historical periods. (4) Results: Through the use of machine vision techniques, typical of artificial intelligence and which use convolutional neural networks, a historical reading of some selected squares is proposed, with the aim of interpreting the dynamics of use and identifying some critical issues in progress. (5) Conclusions: This work validated the usefulness of a method applied to the use of artificial intelligence for the analysis of GSV images at street level. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.

Authors
De Maria M. , Fiumi L. 2 , Mazzei M. 3 , Bik O.V. 1
Journal
Publisher
MDPI AG
Issue number
3
Language
English
Pages
1429-1446
State
Published
Volume
4
Year
2021
Organizations
  • 1 Peoples Friendship University of Russia (RUDN University), 6 Miklukho-Maklaya Street, Moscow, 117198, Russian Federation
  • 2 National Research Council, Istituto di Ingegneria del Mare (INM), Rome, 139, Italy
  • 3 National Research Council, Istituto di Analisi dei Sistemi ed Informatica, LabGeoInf, Via dei Taurini, 19, Rome, I-00185, Italy
Keywords
Artificial intelligence; Cultural heritage; Deep learning; Environment; Neural network
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