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Automatic Creation of Semantically Rich 3D Building Models from Laser Scanner Data

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TLDR
A method to automatically convert the raw 3D point data from a laser scanner positioned at multiple locations throughout a facility into a compact, semantically rich information model that is capable of identifying and modeling the main visible structural components of an indoor environment despite the presence of significant clutter and occlusion.
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This article is published in Automation in Construction.The article was published on 2013-05-01 and is currently open access. It has received 576 citations till now. The article focuses on the topics: Laser scanning & Point cloud.

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H-BIM and Artificial Intelligence: Classification of Architectural Heritage for Semi-Automatic Scan-to-BIM Reconstruction

TL;DR: In this article , a semi-automatic Scan-to-BIM reconstruction approach, making the most of Artificial Intelligence (AI) techniques, was proposed for the classification of digital architectural heritage data.
Proceedings ArticleDOI

A toolchain for automated acquisition and processing of as-built data with autonomous UAVs

TL;DR: This work proposes a toolchain for producing structured point clouds of construction elements in progress for UAVs with newly developed reactive autonomy, guided by stereo cameras in addition to standard GPS.
Proceedings ArticleDOI

A Framework for Constructing Semantic As-is Building Energy Models (BEMs) for Existing Buildings Using Digital Images

TL;DR: This paper presents a framework for an image-based approach to construct complete and semantic as-is BEM geometry models for existing buildings and is expected to extend existing research by creating complete (i.e. include not only building facades but also interior spaces) and semantic-rich asis B EM geometry models.
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Building Information Model for Existing Buildings for Facilities Management: RetroBIM Framework

TL;DR: A new framework aimed at creating information models for facilities management requiring minimal BIM skills is presented and the impact that models created for the operational stage would have on the whole life cycle of a building is discussed.
Journal ArticleDOI

Indoor mesh classification for bim

TL;DR: This work addresses the automatic reconstruction of objects useful for BIM, like walls, floors and ceilings, from meshed and textured mapped 3D point clouds of indoor scenes from semantic segmentation of 3D indoor meshes as the initial step for the automatic generation of BIM models.
References
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Original Contribution: Stacked generalization

David H. Wolpert
- 05 Feb 1992 - 
TL;DR: The conclusion is that for almost any real-world generalization problem one should use some version of stacked generalization to minimize the generalization error rate.
Proceedings ArticleDOI

Image inpainting

TL;DR: A novel algorithm for digital inpainting of still images that attempts to replicate the basic techniques used by professional restorators, and does not require the user to specify where the novel information comes from.
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Photo tourism: exploring photo collections in 3D

TL;DR: This work presents a system for interactively browsing and exploring large unstructured collections of photographs of a scene using a novel 3D interface that consists of an image-based modeling front end that automatically computes the viewpoint of each photograph and a sparse 3D model of the scene and image to model correspondences.
Proceedings ArticleDOI

Modeling and rendering architecture from photographs: a hybrid geometry- and image-based approach

TL;DR: This work presents a new approach for modeling and rendering existing architectural scenes from a sparse set of still photographs, which combines both geometry-based and imagebased techniques, and presents view-dependent texture mapping, a method of compositing multiple views of a scene that better simulates geometric detail on basic models.
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Frequently Asked Questions (11)
Q1. What are the contributions in "Automatic creation of semantically rich 3d building models from laser scanner data" ?

This paper presents a method to automatically convert the raw 3D point data from a laser scanner positioned at multiple locations throughout a building into a compact, semantically rich model. Then, the authors perform a detailed analysis of the recognized surfaces to locate windows and doorways. The authors evaluated the method on a large, highly cluttered data set of a building with forty separate rooms yielding promising results. 

Their experiments suggest that the context aspect of their algorithm improves recognition performance by about 6% and that the most useful contextual features are coplanarity and orthogonality. 

In the first phase, planar patches are extracted from the point cloud and a context-based machine learning algorithm is used to label the patches as wall, ceiling, floor, or clutter. 

The detailed surface modeling phase of the algorithm operates on each planar patch produced by the contextbased modeling process, detecting the occluded regions and regions within openings in the surface. 

A learning algorithm is used to encode the characteristics of opening shape and location, which allows the algorithm to infer the shape of an opening even when it is partially occluded. 

The authors are currently working on completing the points-to-BIM pipeline by implementing an automated method to convert the surface-based representation produced by their algorithm into a volumetric representation that is commonly used for BIMs. 

Detecting openings in unoccluded surfaces can be achieved by analyzing the data density and classifying low density areas as openings. 

The classifier uses local features computed on each patch in isolation as well as features describing the relationship between each patch and its nearest neighbors. 

These models, which are generally known as building information models (BIMs), are used for many purposes, including planning and visualization during the design phase, detection of mistakes made during construction, and simulation and space planning during the management phase. 

The result of this process is a compact model of the walls, floor, and ceiling of a room, with each patch labeled according to its type. 

Building modeling algorithms are frequently demonstrated on simple examples like hallways that are devoid of furniture or other objects that would obscure the surfaces to be modeled.