Automated Scan-to-BIM: A deep learning-based framework for indoor environments with complex furniture elements
Mostafa Mahmoud, Z. G. Zhao, Wu Chen, Mahmoud Adham, Yaxin Li
Abstract
Extensive 3D parametric datasets, such as Building Information Modeling (BIM) models, are crucial for reducing project costs, supporting planning, and enhancing operational efficiency in building management. However, conventional Scan-to-BIM methods rely heavily on manual or semi-automatic techniques, focusing on space-forming elements such as walls while often neglecting indoor space-occupying furniture. These methods struggle with incomplete point clouds, capturing shapes and orientations, and clustering inaccuracies. This paper presents an innovative and efficient deep learning-based framework to automatically reconstruct 3D models from point clouds. The framework accommodates diverse space-forming layouts and automatically generates parametric 3D BIM models for complex space-occupying elements like tables and chairs within the Revit platform. It also produces non-parametric 3D semantic representations of complete indoor scenes. Evaluation of publicly available and locally acquired datasets shows that the framework achieves over 98 % precision, recall, and F1-score, confirming its accuracy and effectiveness in generating complete 3D models. The reconstructed models preserve key real-world characteristics, including geometric fidelity, numerical attributes, spatial positioning, and various shapes and orientations of furniture. Seamless integration of deep learning and model-driven techniques overcomes the limitations of traditional Scan-to-BIM methods, providing an accurate and efficient solution for complex indoor space reconstruction. • An innovative deep learning-based framework for automated Scan-to-BIM is proposed. • Space-forming elements in diverse building layouts are accurately modeled. • Furniture is efficiently reconstructed while preserving real-scene characteristics. • Parametric 3D models for furniture are generated using an algorithm in Revit. • Non-parametric 3D semantic representations of different indoor elements are provided.