This paper proposes a hybrid methodology for the semantic annotation and stratigraphic analysis of architectural heritage, combining supervised machine learning techniques with photogrammetric 3D modeling. The research aims to support the interpretation of complex masonry structures by integrating 2D image-based classification with 3D spatial representations.
The workflow involves the acquisition of photogrammetric datasets, followed by supervised classification of images using a Random Forest algorithm trained on manually annotated samples. As illustrated in the workflow diagram (Fig. 2, p. 783), semantic information related to lithotypes and construction layers is first propagated across the entire image set and subsequently transferred to the 3D point cloud through 2D–3D reprojection. This process enables the creation of semantically enriched 3D models, preserving the relationship between geometric data and interpretative annotations.
Results, shown in the classification outputs (Figs. 4–6, pp. 786–788), demonstrate that the method effectively identifies different construction phases and material layers, particularly in cases with clear colorimetric variation. However, limitations arise in areas with homogeneous textures, where classification accuracy decreases. The study highlights the potential of hybrid AI-based annotation systems to enhance stratigraphic analysis and heritage documentation, while emphasizing the need to integrate additional geometric features to improve robustness.
