Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
Next revision
Previous revision
ispeed:index [2017/04/06 15:17]
yliang
ispeed:index [2017/12/05 14:40] (current)
yliang [In-Memory Based Spatial Queries for Large-Scale 3D Data]
Line 1: Line 1:
 ====== iSPEED ====== ====== iSPEED ======
  
-==== In-Memory Based Spatial Queries for Large-Scale 3D Data with Complex Structures ​====+==== In-Memory Based Spatial Queries for Large-Scale 3D Data ====
  
 3D spatial data has been{{ ​ :​ispeed:​ispeed.png?​nolink&​300x82}}used in numerous industrial applications,​ such as CAD, urban planning, 3D mapping such as Google Earth, terrain modeling, and mineral exploration and environmental assessments. Managing and analyzing large amount of 3D spatial data to derive values and guide decision making have become essential to business success and scientific discoveries. The rapid growth of 3D spatial data is driven by not only industrial applications but also scientific applications such as 3D digital pathology imaging. Large amount of 3D micro-objects such as 3D cells and 3D blood vessels with complex structures are generated from 3D whole slide image volume. There are four main challenges for managing and querying massive 3D spatial data in spatial queries: the explosion of spatial data, the complex tree-like 3D structures, the multiple levels of details representation,​ and the high 3D geometrical computation complexity of spatial queries. 3D spatial data has been{{ ​ :​ispeed:​ispeed.png?​nolink&​300x82}}used in numerous industrial applications,​ such as CAD, urban planning, 3D mapping such as Google Earth, terrain modeling, and mineral exploration and environmental assessments. Managing and analyzing large amount of 3D spatial data to derive values and guide decision making have become essential to business success and scientific discoveries. The rapid growth of 3D spatial data is driven by not only industrial applications but also scientific applications such as 3D digital pathology imaging. Large amount of 3D micro-objects such as 3D cells and 3D blood vessels with complex structures are generated from 3D whole slide image volume. There are four main challenges for managing and querying massive 3D spatial data in spatial queries: the explosion of spatial data, the complex tree-like 3D structures, the multiple levels of details representation,​ and the high 3D geometrical computation complexity of spatial queries.
Line 22: Line 22:
   * [[:​ispeed:​download|Download]]   * [[:​ispeed:​download|Download]]
   * [[:​ispeed:​installation|Installation]]   * [[:​ispeed:​installation|Installation]]
-  * [[:​ispeed:​features|Features]] 
   * [[:​ispeed:​examples|Examples]]   * [[:​ispeed:​examples|Examples]]
-  * [[:​ispeed:​documentation|Documentation]] 
- 
   * [[:​ispeed:​teams|Development Team]]   * [[:​ispeed:​teams|Development Team]]
   * [[:​ispeed:​sponsors|Sponsors]]   * [[:​ispeed:​sponsors|Sponsors]]