The Scientific World Journal (Jan 2014)

Spectral Pattern Classification in Lidar Data for Rock Identification in Outcrops

  • Leonardo Campos Inocencio,
  • Mauricio Roberto Veronez,
  • Francisco Manoel Wohnrath Tognoli,
  • Marcelo Kehl de Souza,
  • Reginaldo Macedônio da Silva,
  • Luiz Gonzaga Jr,
  • César Leonardo Blum Silveira

DOI
https://doi.org/10.1155/2014/539029
Journal volume & issue
Vol. 2014

Abstract

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The present study aimed to develop and implement a method for detection and classification of spectral signatures in point clouds obtained from terrestrial laser scanner in order to identify the presence of different rocks in outcrops and to generate a digital outcrop model. To achieve this objective, a software based on cluster analysis was created, named K-Clouds. This software was developed through a partnership between UNISINOS and the company V3D. This tool was designed to begin with an analysis and interpretation of a histogram from a point cloud of the outcrop and subsequently indication of a number of classes provided by the user, to process the intensity return values. This classified information can then be interpreted by geologists, to provide a better understanding and identification from the existing rocks in the outcrop. Beyond the detection of different rocks, this work was able to detect small changes in the physical-chemical characteristics of the rocks, as they were caused by weathering or compositional changes.