DETECTION OF INCONSISTENCIES IN GEOSPATIAL DATA WITH GEOSTATISTICS

Authors

  • Adriana Maria Rocha Trancoso Santos UFV
  • Gerson Rodrigues dos Santos UFV
  • Paulo César Emiliano UFV
  • Nilcilene das Graças Medeiros UFV
  • Amy L. Kaleita Iowa State University
  • Lígia de Oliveira Serrano Pruski UFV

Keywords:

Outliers, geoprocessing, LiDAR technology

Abstract

Almost every researcher has come through observations that “drift” from the rest of the sample, suggesting some inconsistency. The aim of this paper is to propose a new inconsistent data detection method for continuous geospatial data based in Geostatistics, independently from the generative cause (measuring and execution errors and inherent variability data). The choice of Geostatistics is based in its ideal characteristics, as avoiding systematic errors, for example. The importance of a new inconsistent detection method proposal is in the fact that some existing methods used in geospatial data consider theoretical assumptions hardly attended. Equally, the choice of the data set is related to the importance of the LiDAR technology (Light Detection and Ranging) in the production of Digital Elevation Models (DEM). Thus, with the new methodology it was possible to detect and map discrepant data. Comparing it to a much utilized detections method, BoxPlot, the importance and functionality of the new method was verified, since the BoxPlot did not detect any data classified as discrepant. The proposed method pointed that, in average, 1,2% of the data of possible regionalized inferior outliers and, in average, 1,4% of possible regionalized superior outliers, in relation to the set of data used in the study.

Published

2017-07-31

How to Cite

Santos, A. M. R. T., Santos, G. R. dos, Emiliano, P. C., Medeiros, N. das G., Kaleita, A. L., & Pruski, L. de O. S. (2017). DETECTION OF INCONSISTENCIES IN GEOSPATIAL DATA WITH GEOSTATISTICS. Bulletin of Geodetic Sciences, 23(2). Retrieved from https://revistas.ufpr.br/bcg/article/view/52783

Issue

Section

Article