The Classification of Cultural Heritage Buildings in Athens Using Deep Learning Techniques

Author:

Siountri Konstantina12ORCID,Anagnostopoulos Christos-Nikolaos2

Affiliation:

1. Digital Culture, Smart Cities, IoT & Advanced Digital Technologies, Department of Informatics, University of Piraeus, 185 34 Piraeus, Greece

2. Cultural Technology and Communication Department, University of the Aegean, 811 00 Mytilene, Greece

Abstract

Architectural structures, the basic elements of the urban web, are an aggregation of buildings that have been built at different times, with different materials, and in different styles. Through research, they can be divided into groups that present common morphological attributes and refer to different historical periods with particular social, economic, and cultural characteristics. The identification of these common repeating elements and organizational construction structures leads to the identification of the “type” of the building, which until now has required specialized knowledge, time, and customized proof checking. Recent developments in the field of artificial intelligence (AI) and, more specifically, in deep learning (DL) appear to contribute gradually to the study of the typological evolution of buildings, especially those of cultural heritage (CH). In this paper, we present a deep-learning-based method for the classification of modern Athenian architecture (since 1830) using the YOLO algorithm. This research work can contribute to the digital management of the existing urban building stock, the autonomous large-scale categorization of data that are available from street view images, and the enhancement of the tangible CH.

Funder

MSc Digital Culture, Smart Cities, IoT & ADT, University of Piraeus

Publisher

MDPI AG

Subject

Materials Science (miscellaneous),Archeology,Conservation

Reference65 articles.

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