PCCT: A point cloud classification tool to create 3D training data to adjust and develop 3D convnet

Eike Barnefske, Harald Sternberg

Abstract

Point clouds give a very detailed and sometimes very accurate representation of the geometry of captured objects. In surveying, point clouds captured with laser scanners or camera systems are an intermediate result that must be processed further. Often the point cloud has to be divided into regions of similar types (object classes) for the next process steps. These classifications are very time-consuming and cost-intensive compared to acquisition. In order to automate this process step, conventional neural networks (ConvNet), which take over the classification task, are investigated in detail. In addition to the network architecture, the classification performance of a ConvNet depends on the training data with which the task is learned. This paper presents and evaluates the point clould classification tool (PCCT) developed at HCU Hamburg. With the PCCT, large point cloud collections can be semi-automatically classified. Furthermore, the influence of erroneous points in three-dimensional point clouds is investigated. The network architecture PointNet is used for this investigation.
Original languageEnglish
Title of host publicationISPRS ICWG II/III, PIA19+MRSS19
Subtitle of host publicationPhotogrammetric Image Analysis & Munich Remote Sensing Symposium: Joint ISPRS conference
EditorsU. Stilla, L. Hoegner, Y. Xu
Place of PublicationGöttingen
PublisherCopernicus Publications
Pages35–40
DOIs
Publication statusPublished - 17 Sept 2019
EventPhotogrammetric Image Analysis & Munich Remote Sensing Symposium - Munich, Germany
Duration: 18 Sept 201920 Sept 2019

Publication series

NameInternational Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
PublisherCopernicus
VolumeXLII-2/W16

Conference

ConferencePhotogrammetric Image Analysis & Munich Remote Sensing Symposium
Country/TerritoryGermany
CityMunich
Period18/09/1920/09/19

Keywords

  • ConvNet
  • semantic labeling
  • training data
  • TLS
  • deep learning

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