Voluminous geographic data have been, and continue to be, collected with modern data acquisition techniques such as global positioning systems (GPS), high-resolution remote sensing, location-aware services and surveys, and internet-based volunteered geographic information. There is an urgent need fo
β¦ LIBER β¦
Spatial ordering and encoding for geographic data mining and visualization
β Scribed by Diansheng Guo; Mark Gahegan
- Book ID
- 106387380
- Publisher
- Springer US
- Year
- 2006
- Tongue
- English
- Weight
- 1022 KB
- Volume
- 27
- Category
- Article
- ISSN
- 0925-9902
No coin nor oath required. For personal study only.
π SIMILAR VOLUMES
Spatial data mining and geographic knowl
β
Jeremy Mennis; Diansheng Guo
π
Article
π
2009
π
Elsevier Science
π
English
β 182 KB
A Framework for Encoding Spatial Data
β
Kenneth J. Dueker
π
Article
π
2010
π
John Wiley and Sons
π
English
β 419 KB
Sorting Spatial Data for Sampling and Ot
β
Alan Saalfeld
π
Article
π
1998
π
Springer US
π
English
β 158 KB
Rough set spatial data modeling for data
β
Theresa Beaubouef; Roy Ladner; Frederick Petry
π
Article
π
2004
π
John Wiley and Sons
π
English
β 130 KB
Uncertainty management is necessary for real world applications, especially those used with data mining. The Region Connection Calculus (RCC) and egg-yolk methods have proven useful for the representation of vague regions in spatial data. Rough set theory has been shown to be an effective tool for d
Temporal and spatial data mining with se
β
J.-F. Mari; F. Le Ber
π
Article
π
2005
π
Springer
π
English
β 434 KB
Erratum to βSpatial data mining and geog
β
Diansheng Guo; Jeremy Mennis
π
Article
π
2010
π
Elsevier Science
π
English
β 92 KB