The digital management of architectural heritage information is still a complex problem, as a heritage object requires an integrated representation of various types of information in order to develop appropriate restoration or conservation strategies. Currently, there is extensive research focused on automatic procedures of segmentation and classification of 3D point clouds or meshes, which can accelerate the study of a monument and integrate it with heterogeneous information and attributes, useful to characterize and describe the surveyed object. The aim of this study is to propose an optimal, repeatable procedure to manage various types of 3D surveying data and associate them with heterogeneous information and attributes to characterize and describe the surveyed object. This paper presents an approach for classifying 3D heritage models, starting from the segmentation of their textures based on supervised machine learning methods. The approach is effective and with further potential.

From 2D to 3D supervised segmentation for cultural heritage applications.

Dininno, D.;Petrucci, G.;
2018

Abstract

The digital management of architectural heritage information is still a complex problem, as a heritage object requires an integrated representation of various types of information in order to develop appropriate restoration or conservation strategies. Currently, there is extensive research focused on automatic procedures of segmentation and classification of 3D point clouds or meshes, which can accelerate the study of a monument and integrate it with heterogeneous information and attributes, useful to characterize and describe the surveyed object. The aim of this study is to propose an optimal, repeatable procedure to manage various types of 3D surveying data and associate them with heterogeneous information and attributes to characterize and describe the surveyed object. This paper presents an approach for classifying 3D heritage models, starting from the segmentation of their textures based on supervised machine learning methods. The approach is effective and with further potential.
2018
Istituto di Scienze del Patrimonio Culturale - ISPC
Istituto per i Sistemi Agricoli e Forestali del Mediterraneo - ISAFOM
Classification, Segmentation, Cultural Heritage, Machine Learning, Random Forest
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/533907
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