Task-Management Method Using R-Tree Spatial Cloaking for Large-Scale Crowdsourcing
Abstract
With the development of sensor technology and the popularization of the data-driven service paradigm, spatial crowdsourcing systems have become an important way of collecting map-based location data. However, large-scale task management and location privacy are important factors for participants in spatial crowdsourcing. In this paper, we propose the use of an R-tree spatial cloaking-based task-assignment method for large-scale spatial crowdsourcing. We use an estimated R-tree based on the requested crowdsourcing tasks to reduce the crowdsourcing server-side inserting cost and enable the scalability. By using Minimum Bounding Rectangle (MBR)-based spatial anonymous data without exact position data, this method preserves the location privacy of participants in a simple way. In our experiment, we showed that our proposed method is faster than the current method, and is very efficient when the scale is increased.
- Publication:
-
Symmetry
- Pub Date:
- December 2017
- DOI:
- Bibcode:
- 2017Symm....9..311L
- Keywords:
-
- spatial cloaking;
- R-tree;
- large scale;
- spatial crowdsourcing