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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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Journal ArticleDOI

Clustering of wall geometry from unstructured point clouds

TL;DR: A method is presented to automatically group wall segments derived from point clouds according to the proper walls of a building using a Conditional Random Field that evaluates the context of each observation in order to determine which wall it belongs too.
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Extracting structural components of concrete buildings from laser scanning point clouds from construction sites

TL;DR: In this article , the authors proposed a method to automatically extract point clouds of individual surfaces of structural components of a concrete building, which subsequently can be used to inspect construction quality based on geometric information of the surfaces.
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Percentage of Completion of In-Situ Cast Concrete Walls Using Point Cloud Data and Bim

TL;DR: A framework is presented to derive work progress of construction sites based on point cloud data and a methodology is constituted to compute the Percentage of Completion of in-situ cast concrete walls to lead to a better understanding of the progress monitoring paradigm.
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Three-Dimensional Object Detection with Deep Neural Networks for Automatic As-Built Reconstruction

TL;DR: This data indicates that 3D as-built reconstruction for non-Manhattan structures and multiroom buildings remains an industrywide challenge due to complex building environments and high levels of uncertainty.
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A 3D digitisation workflow for architecture-specific annotation of built heritage

TL;DR: In this paper, a 3D digitisation workflow through the involvement of reality capture technologies for the annotation and structure analysis of built heritage with the use of 3D Convolutional Neural Networks (3D CNNs) for classification purposes is presented.
References
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Journal ArticleDOI

Random Forests

TL;DR: Internal estimates monitor error, strength, and correlation and these are used to show the response to increasing the number of features used in the forest, and are also applicable to regression.
Book

Introduction to Machine Learning

TL;DR: Introduction to Machine Learning is a comprehensive textbook on the subject, covering a broad array of topics not usually included in introductory machine learning texts, and discusses many methods from different fields, including statistics, pattern recognition, neural networks, artificial intelligence, signal processing, control, and data mining.
Book ChapterDOI

Introduction to Machine Learning

TL;DR: Machine learning is evolved from a collection of powerful techniques in AI areas and has been extensively used in data mining, which allows the system to learn the useful structural patterns and models from training data as discussed by the authors.
Journal ArticleDOI

Building Information Modeling (BIM) for existing buildings — Literature review and future needs

TL;DR: Results show scarce BIM implementation in existing buildings yet, due to challenges of (1) high modeling/conversion effort from captured building data into semantic BIM objects, (2) updating of information in BIM and (3) handling of uncertain data, objects and relations in B IM occurring inexisting buildings.
Journal ArticleDOI

Automatic reconstruction of as-built building information models from laser-scanned point clouds: A review of related techniques

TL;DR: This article surveys techniques developed in civil engineering and computer science that can be utilized to automate the process of creating as-built BIMs and outlines the main methods used by these algorithms for representing knowledge about shape, identity, and relationships.
Related Papers (5)
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.