Semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning

Photogrammetry and Laser Scanning can be used to complement one another, during instances where digital images are taken of the object of interest with the intention to merge the 3D data and image in order to reconstruct photorealistic virtual models with photo quality and metric realism. Laser s...

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Bibliographic Details
Main Author: Lim, Kwanthar
Format: Thesis
Language:English
Published: Curtin University 2012
Online Access:http://hdl.handle.net/20.500.11937/2592
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author Lim, Kwanthar
author_facet Lim, Kwanthar
author_sort Lim, Kwanthar
building Curtin Institutional Repository
collection Online Access
description Photogrammetry and Laser Scanning can be used to complement one another, during instances where digital images are taken of the object of interest with the intention to merge the 3D data and image in order to reconstruct photorealistic virtual models with photo quality and metric realism. Laser scanning acquires 3D data points and intensity information of objects but is unable to directly obtain photorealistic colour in most cases. To get photorealistic colour, some laser scanners come with an onboard camera, or alternatively a separate camera is used, and registration is required for both cases. One example uses a specially designed camera mounting for the laser scanner and another is to transfer colour information from 2D images captured from near the scanner to the 3D points using close-range photogrammetry. Currently limited methods exist for the registration of the data from multiple-sensors. This research outlines the evaluation and semi-automated registration of a single colour image to laser scanning point cloud data, using the canonical transformation and Direct Linear Transformation (DLT) methods for registration.The method presented in this thesis is to directly reconstruct three dimensional data from a single image with the assistance of estimated depth information. Laser scanning point cloud information is used to supplement the recovery of the estimated depth information, which is then assigned to the image data. Two primary aspects for this research are (1) the Synthetic Camera Image, following on from previous work reported in the literature on utilising synthetic imagery created from point-clouds, and (2) the Direct Linear Transformation model, which is used to provide the transformation parameters between the 2D and 3D datasets.Synthetic datasets were used to provide an indication of expected results in terms of range, incidence angle and image resolution. The image resolution is an important factor to consider. It should be as high as possible as it affects the outcome of precision. Testing with real data, the proposed method resulted in a precision of 2 mm for the data of a model T-Rex dinosaur dataset, and 19mm for a typical indoor scene. The variations in precision levels are due to different values for range, incidence angle and image resolution. Overall the results achieved the expectations producing a colour point cloud with metric assessment.
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spelling curtin-20.500.11937-25922017-02-20T06:38:21Z Semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning Lim, Kwanthar Photogrammetry and Laser Scanning can be used to complement one another, during instances where digital images are taken of the object of interest with the intention to merge the 3D data and image in order to reconstruct photorealistic virtual models with photo quality and metric realism. Laser scanning acquires 3D data points and intensity information of objects but is unable to directly obtain photorealistic colour in most cases. To get photorealistic colour, some laser scanners come with an onboard camera, or alternatively a separate camera is used, and registration is required for both cases. One example uses a specially designed camera mounting for the laser scanner and another is to transfer colour information from 2D images captured from near the scanner to the 3D points using close-range photogrammetry. Currently limited methods exist for the registration of the data from multiple-sensors. This research outlines the evaluation and semi-automated registration of a single colour image to laser scanning point cloud data, using the canonical transformation and Direct Linear Transformation (DLT) methods for registration.The method presented in this thesis is to directly reconstruct three dimensional data from a single image with the assistance of estimated depth information. Laser scanning point cloud information is used to supplement the recovery of the estimated depth information, which is then assigned to the image data. Two primary aspects for this research are (1) the Synthetic Camera Image, following on from previous work reported in the literature on utilising synthetic imagery created from point-clouds, and (2) the Direct Linear Transformation model, which is used to provide the transformation parameters between the 2D and 3D datasets.Synthetic datasets were used to provide an indication of expected results in terms of range, incidence angle and image resolution. The image resolution is an important factor to consider. It should be as high as possible as it affects the outcome of precision. Testing with real data, the proposed method resulted in a precision of 2 mm for the data of a model T-Rex dinosaur dataset, and 19mm for a typical indoor scene. The variations in precision levels are due to different values for range, incidence angle and image resolution. Overall the results achieved the expectations producing a colour point cloud with metric assessment. 2012 Thesis http://hdl.handle.net/20.500.11937/2592 en Curtin University fulltext
spellingShingle Lim, Kwanthar
Semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning
title Semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning
title_full Semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning
title_fullStr Semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning
title_full_unstemmed Semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning
title_short Semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning
title_sort semi-automated registration with direct linear transformation and quality evaluation of digital photogrammetry and terrestrial laser scanning
url http://hdl.handle.net/20.500.11937/2592