Title: GIS information feature estimation algorithm based on big data

Authors: Chunyang Lu; Feng Wen

Addresses: School of Surveying and Urban Spatial Information, Henan University of Urban Construction, Pingdingshan 467036, Henan, China ' School of Surveying and Urban Spatial Information, Henan University of Urban Construction, Pingdingshan 467036, Henan, China

Abstract: In order to improve the data mining and information scheduling capabilities of geo-information system (GIS), it is necessary to optimise GIS information feature estimation and perform GIS information feature extraction, so a GIS information feature estimation algorithm based on big data analysis is proposed. In this algorithm, the piecewise linear estimation method is adopted to reconstruct feature data in the GIS information database in group, and associated information fusion is performed to the GIS data in the database, and adaptive scheduling is performed to the GIS information feature database through the cascaded distributed scheduling method; according to the spatial distribution of geographic information, vector adjustment is performed to the cluster centre, and the frequent item mining method is adopted to extract features of GIS information, and then sequential processing is adopted to the extracted feature quantity of GIS information; the regularised power density spectrum estimation method is adopted to perform unbiased estimation to GIS information feature data. Simulation results show that in GIS information feature estimation, the proposed method can provide estimation with low bias and high accuracy, so it has good GIS information scheduling capability and precision.

Keywords: big data; geo-information system; GIS; information feature estimation; associated information fusion.

DOI: 10.1504/IJICT.2019.102480

International Journal of Information and Communication Technology, 2019 Vol.15 No.2, pp.198 - 209

Received: 09 May 2018
Accepted: 15 Jun 2018

Published online: 27 Sep 2019 *

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