IEEE Access (Jan 2020)

A Blocky and Layered Management Schema for Remote Sensing Data

  • Beibei Yang,
  • Rui Wang,
  • Wen Zhang,
  • Chenhan Wu,
  • Xujin Wang,
  • Lingkui Meng

DOI
https://doi.org/10.1109/ACCESS.2020.2997519
Journal volume & issue
Vol. 8
pp. 99254 – 99272

Abstract

Read online

In the era of rapid data expansion and computer technology development, discrete storage, multiband push and fuzzy query remote sensing data management methods are no longer suitable for the data analysis needs of users, including the needs for long time series, global regions and multidata fusion. After analyzing traditional data management techniques, this paper discusses the existing achievements and development trends of current technologies. This paper aims to solve the problem of data sharing difficulties and organizational inconsistency caused by the use of different formats for the same spatial object. Based on a discrete global grid, this paper studies the blocky division method and coding specification of Google S2 and then accomplishes the layered storage of remote sensing data in HBase. Finally, Kylin is used to build a cube model to discuss the information mining analysis changes in the new data management model. Experiments show that the blocky and layered management schema (BLMS) can realize the unified management of global remote sensing data with multisource, heterogeneous, multiscale, and long-term characteristics and provide accurate data services on demand.

Keywords