A Compact Representation of Raster Time Series

The raster model is widely used in Geographic Information Systems to represent data that vary continuously in space, such as temperatures, precipitations, elevation, among other spatial attributes. In applications like weather forecast systems, not just a single raster, but a sequence of rasters covering the same region at different timestamps, known as a raster time series, needs to be stored and queried. Compact data structures have proven successful to provide space-efficient representations of rasters with query capabilities. Hence, a naive approach to save space is to use such a representation for each raster in a time series. However, in this paper we show that it is possible to take advantage of the temporal locality that exists in a raster time series to reduce the space necessary to store it while keeping competitive query times for several types of queries.

[1]  José R. Paramá,et al.  Scalable and queryable compressed storage structure for raster data , 2017, Inf. Syst..

[2]  Kuo-Liang Chung,et al.  A strip-splitting-based optimal algorithm for decomposing a query window into maximal quadtree blocks , 2004, IEEE Transactions on Knowledge and Data Engineering.

[3]  Alistair Moffat,et al.  From Theory to Practice: Plug and Play with Succinct Data Structures , 2013, SEA.

[4]  Guido Proietti,et al.  An optimal algorithm for decomposing a window into maximal quadtree blocks , 1999, Acta Informatica.

[5]  Nieves R. Brisaboa,et al.  Compact Querieable Representations of Raster Data , 2013, SPIRE.

[6]  José R. Paramá,et al.  Towards a Compact Representation of Temporal Rasters , 2018, SPIRE.

[7]  James M. Kang,et al.  Space-Filling Curves , 2017, Encyclopedia of GIS.

[8]  Weidong Kou Digital Image Compression: Algorithms and Standards , 2010 .

[9]  Travis Gagie,et al.  Faster Compressed Quadtrees , 2014, 2015 Data Compression Conference.

[10]  B. Roca,et al.  New data structures and algorithms for the efficient management of large spatial datasets , 2014 .

[11]  Gregory K. Wallace,et al.  The JPEG still picture compression standard , 1991, CACM.

[12]  Gonzalo Navarro,et al.  Compact Data Structures - A Practical Approach , 2016 .

[13]  Hanan Samet,et al.  Foundations of multidimensional and metric data structures , 2006, Morgan Kaufmann series in data management systems.

[14]  Gonzalo Navarro,et al.  Compact representation of Web graphs with extended functionality , 2014, Inf. Syst..

[15]  Gilberto Gutiérrez,et al.  Improved Queryable Representations of Rasters , 2017, 2017 Data Compression Conference (DCC).

[16]  Germain Forestier,et al.  Analysing Satellite Image Time Series by Means of Pattern Mining , 2010, IDEAL.

[17]  Michael F. Worboys,et al.  GIS : a computing perspective , 2004 .

[18]  David Salomon,et al.  Data Compression: The Complete Reference , 2006 .