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Classification of sensor independent point cloud data of building objects using random forests

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TLDR
A generic approach to automatically identify structural elements for the purposes of Scan-to-BIM by taking a set of planar primitives that are pre-segmented from the point cloud.
Abstract
The Architectural, Engineering and Construction (AEC) industry is looking to integrate Building Information Modeling (BIM) for existing buildings. Currently these as-built models are created manually, which is time-consuming. An important step in the automated Scan-to-BIM procedure is the interpretation and classification of point cloud data. This is computationally challenging due to the sheer size of point cloud data for an entire building. Additionally, the variety of objects makes classification problematic. Existing methods integrate prior knowledge from the sensors or environment to improve the results. However, these approaches are therefore often case specific and thus have limited applicability. The goal of this research is to provide a method that is independent of any sensor or scene within a building environment. Furthermore, our method processes the entire building simultaneously, resulting in more distinct local and contextual features. This paper presents a generic approach to automatically identify structural elements for the purposes of Scan-to-BIM. More specifically, a Random Forests classifier is employed for the classification of the floors, ceilings, roofs, walls and beams. As input, our algorithm takes a set of planar primitives that are pre-segmented from the point cloud. This significantly reduces the data while maintaining accuracy. Both contextual and geometric features are used to describe the observed patches. The algorithm is evaluated using realistic data for a wide variety of existing buildings including houses, school facilities, a factory, a castle and a church. The experiments prove that the proposed algorithm is capable of properly labeling 87% of the structural elements with an average precision of 85% in highly cluttered environments without the support of the sensors position. In future work, the classified patches will be processed by class-specific reconstruction algorithms to create BIM geometry.

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Citations
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Automatic reconstruction of fully volumetric 3D building models from oriented point clouds

TL;DR: A novel method for reconstructing parametric, volumetric, multi-story building models from unstructured, unfiltered indoor point clouds with oriented normals by means of solving an integer linear optimization problem.
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Digital twin and its implementations in the civil engineering sector

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Classification of 3D Digital Heritage

Eleonora Grilli, +1 more
- 08 Apr 2019 - 
TL;DR: This paper aims to develop, explore and validate reliable and efficient automated procedures for the classification of 3D data (point clouds or polygonal mesh models) of heritage scenarios and demonstrates that the proposed approach is reliable and replicable and it is effective for restoration and documentation purposes.
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Automated digital modeling of existing buildings: A review of visual object recognition methods

TL;DR: A summary of the efforts of the past ten years in automating the digital modeling of existing buildings by applying reality capture devices and computer vision algorithms, with a particular focus on object recognition methods.
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Sustainability-led design: Feasibility of incorporating whole-life cycle energy assessment into BIM for refurbishment projects

TL;DR: In this article, the authors focus on the use of BIM sustainability design tools in refurbishment projects, to achieve energy efficient buildings and achieve sustainability criteria for refurbishing non-domestic buildings.
References
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Journal ArticleDOI

Tracking the Built Status of MEP Works: Assessing the Value of a Scan-vs-BIM System

TL;DR: In this article, a Scan-vs-BIM object recognition framework was proposed for the automatic assessment of as-built status of MEP works in construction projects at a cost that continues to decline.
Journal ArticleDOI

An algorithm for automatic detection of pole-like street furniture objects from Mobile Laser Scanner point clouds

TL;DR: The algorithm can be used with data from any Mobile Laser Scanning system, as it transforms the original point cloud and fits it into a regular grid, thus avoiding irregularities produced due to point density differences within the point cloud.
Journal ArticleDOI

Semantic decomposition and reconstruction of residential scenes from LiDAR data

TL;DR: A novel building modeling scheme that aims to decompose and fit the building point cloud into basic blocks that are block-wise symmetric and convex and is compared with other state-of-the-art reconstruction algorithms to show its advantage in terms of both quality and speed.
Journal ArticleDOI

3D terrestrial LIDAR classifications with super-voxels and multi-scale Conditional Random Fields

TL;DR: This paper proposed using the discriminative Conditional Random Fields for the classification problem and modified the model to incorporate multi-scales for super-voxel labeling and showed great improvement in the training and inference rate while maintaining comparable classification accuracy with previous approaches.
Journal ArticleDOI

Contextual segment-based classification of airborne laser scanner data

TL;DR: A new approach to contextual classification of segmented airborne laser scanning data using a Conditional Random Field to minimise both under- and over-segmentation of point cloud segmentation methods.
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Frequently Asked Questions (2)
Q1. What contributions have the authors mentioned in the paper "Classification of sensor independent point cloud data of building objects using random forests" ?

The goal of this research is to provide a method that is sensor independent and labels entire buildings at once. This paper presents a method to automatically identify structural elements for the purposes of Scan-to-BIM. The experiments prove that the proposed algorithm is capable of labelling structural elements with reported precisions of 85 % and 87 % recall in highly cluttered environments. 

In future work, the method will be investigated further to improve the labelling performance. Also, research will be performed towards the integration of probabilistic graphical models to increase the methods perfor- mance.