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© 2025 Dienne All rights reserved

Dienne

Building Information Modeling, Data & Semantics

ISSN 26108755

The Building Information Modeling (BIM), along with UNI 2017 standards and operative recommendations by the BIM Handbook, has been recognized as the key information tool for digitalization in the construction sector.

The magazine Dn  represents a unique experience at national level. It addresses specific themes through an unprecedented analytical approach. It presents a varied selection of methods, technologies and instruments clearly defined to “build right and allow people to live”.

The magazine content is quite diversified. It presents exploratory approaches in the field of H-BIM, aimed at a correct digitization of historical heritage, and a number of virtuous examples of good practices for the implementation of major building interventions characterized by marked process innovations, a description of operational proposals and related applications in the managing and maintenance area.

Latest papers

Index Volume 16


Editorial Vol. 16


Digitizing the Barberini Collection Canvases: Guidelines, Protocols, and Quality Parameters


AI/H-BIM workflow to digitize and analyze structural damage


Structure and Methodology for Building a Dataset of Images of Roman Brick Masonry


Spherical panoramas for the visual implementation of BIM models in museums


3D modeling of cultural spaces using Artificial Intelligence: from rapid and low resolution video capture to high performance reconstruction


Beyond the Line: Between Stylistic Learning and Controlled Generation with Stable Diffusion


© 2025 Dienne All rights reserved

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