CLASSIFICATION OF AERIAL PHOTOGRAMMETRIC 3D POINT CLOUDS

We present a powerful method to extract per-point semantic class labels from aerial photogrammetry data. Labelling this kind of data is important for tasks such as environmental modelling, object classification and scene understanding. Unlike previous point cloud classification methods that rely e...

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Main Authors: C. Becker, N. Häni, E. Rosinskaya, E. d’Angelo, C. Strecha
Format: Article
Language:English
Published: Copernicus Publications 2017-05-01
Series:ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:http://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/IV-1-W1/3/2017/isprs-annals-IV-1-W1-3-2017.pdf
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spelling doaj-cb55ac32b6d848a58612e5c53f4476c02020-11-25T01:00:41ZengCopernicus PublicationsISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences2194-90422194-90502017-05-01IV-1-W131010.5194/isprs-annals-IV-1-W1-3-2017CLASSIFICATION OF AERIAL PHOTOGRAMMETRIC 3D POINT CLOUDSC. Becker0N. Häni1E. Rosinskaya2E. d’Angelo3C. Strecha4Pix4D SA, EPFL Innovation Park, Building F, 1015 Lausanne, SwitzerlandUniversity of Minnesota, USAPix4D SA, EPFL Innovation Park, Building F, 1015 Lausanne, SwitzerlandPix4D SA, EPFL Innovation Park, Building F, 1015 Lausanne, SwitzerlandPix4D SA, EPFL Innovation Park, Building F, 1015 Lausanne, SwitzerlandWe present a powerful method to extract per-point semantic class labels from aerial photogrammetry data. Labelling this kind of data is important for tasks such as environmental modelling, object classification and scene understanding. Unlike previous point cloud classification methods that rely exclusively on geometric features, we show that incorporating color information yields a significant increase in accuracy in detecting semantic classes. We test our classification method on three real-world photogrammetry datasets that were generated with Pix4Dmapper Pro, and with varying point densities. We show that off-the-shelf machine learning techniques coupled with our new features allow us to train highly accurate classifiers that generalize well to unseen data, processing point clouds containing 10 million points in less than 3 minutes on a desktop computer.http://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/IV-1-W1/3/2017/isprs-annals-IV-1-W1-3-2017.pdf
collection DOAJ
language English
format Article
sources DOAJ
author C. Becker
N. Häni
E. Rosinskaya
E. d’Angelo
C. Strecha
spellingShingle C. Becker
N. Häni
E. Rosinskaya
E. d’Angelo
C. Strecha
CLASSIFICATION OF AERIAL PHOTOGRAMMETRIC 3D POINT CLOUDS
ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
author_facet C. Becker
N. Häni
E. Rosinskaya
E. d’Angelo
C. Strecha
author_sort C. Becker
title CLASSIFICATION OF AERIAL PHOTOGRAMMETRIC 3D POINT CLOUDS
title_short CLASSIFICATION OF AERIAL PHOTOGRAMMETRIC 3D POINT CLOUDS
title_full CLASSIFICATION OF AERIAL PHOTOGRAMMETRIC 3D POINT CLOUDS
title_fullStr CLASSIFICATION OF AERIAL PHOTOGRAMMETRIC 3D POINT CLOUDS
title_full_unstemmed CLASSIFICATION OF AERIAL PHOTOGRAMMETRIC 3D POINT CLOUDS
title_sort classification of aerial photogrammetric 3d point clouds
publisher Copernicus Publications
series ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
issn 2194-9042
2194-9050
publishDate 2017-05-01
description We present a powerful method to extract per-point semantic class labels from aerial photogrammetry data. Labelling this kind of data is important for tasks such as environmental modelling, object classification and scene understanding. Unlike previous point cloud classification methods that rely exclusively on geometric features, we show that incorporating color information yields a significant increase in accuracy in detecting semantic classes. We test our classification method on three real-world photogrammetry datasets that were generated with Pix4Dmapper Pro, and with varying point densities. We show that off-the-shelf machine learning techniques coupled with our new features allow us to train highly accurate classifiers that generalize well to unseen data, processing point clouds containing 10 million points in less than 3 minutes on a desktop computer.
url http://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/IV-1-W1/3/2017/isprs-annals-IV-1-W1-3-2017.pdf
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