Spatial Data Quality in the Internet of Things: Management, Exploitation, and Prospects

Huan Li, Hua Lu, Christian S. Jensen, Bo Tang, Muhammad Aamir Cheema

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningpeer review

Abstract

With the continued deployment of the Internet of Things (IoT), increasing volumes of devices are being deployed that emit massive spatially referenced data. Due in part to the dynamic, decentralized, and heterogeneous architecture of the IoT, the varying and often low quality of spatial IoT data (SID) presents challenges to applications built on top of this data. This survey aims to provide unique insight to practitioners who intend to develop IoT-enabled applications and to researchers who wish to conduct research that relates to data quality in the IoT setting. The survey offers an inventory analysis of major data quality dimensions in SID and covers significant data characteristics and associated quality considerations. The survey summarizes data quality related technologies from both task and technique perspectives. Organizing the technologies from the task perspective, it covers recent progress in SID quality management, encompassing location refinement, uncertainty elimination, outlier removal, fault correction, data integration, and data reduction; and it covers low-quality SID exploitation, encompassing querying, analysis, and decision-making techniques. Finally, the survey covers emerging trends and open issues concerning the quality of SID.
OriginalsprogEngelsk
Artikelnummer3498338
TidsskriftACM Computing Surveys
Vol/bind55
Udgave nummer3
Sider (fra-til)1-41
ISSN0360-0300
DOI
StatusUdgivet - 3 feb. 2022

Emneord

  • geo-sensory data
  • Internet of Things
  • location refinement
  • quality management
  • spatial computing
  • spatial queries
  • spatiotemporal data cleaning
  • spatiotemporal dependencies

Citer dette