| Literature DB >> 26389910 |
Yuanyuan Zeng1,2, Deshi Li3,4.
Abstract
Participatory sensing services utilizing the abundant social participants with sensor-enabled handheld smart device resources are gaining high interest nowadays. One of the challenges faced is the recruitment of participants by fully utilizing their daily activity behavior with self-adaptiveness toward the realistic application scenarios. In the paper, we propose a self-adaptive behavior-aware recruitment scheme for participatory sensing. People are assumed to join the sensing tasks along with their daily activity without pre-defined ground truth or any instructions. The scheme is proposed to model the tempo-spatial behavior and data quality rating to select participants for participatory sensing campaign. Based on this, the recruitment is formulated as a linear programming problem by considering tempo-spatial coverage, data quality, and budget. The scheme enables one to check and adjust the recruitment strategy adaptively according to application scenarios. The evaluations show that our scheme provides efficient sensing performance as stability, low-cost, tempo-spatial correlation and self-adaptiveness.Entities:
Keywords: behavior-aware; data recruitment; participatory sensing; self-adaptive
Year: 2015 PMID: 26389910 PMCID: PMC4610571 DOI: 10.3390/s150923361
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The association matrix based on mobile trajectory.
Figure 2The tensor illustration of Geolife user data.
Figure 3The number of participants with different recruitment schemes.
Figure 4The average stay duration with different recruitment schemes.
Figure 5The number of participants with different similarity threshold.
Figure 6The average stay duration with different similarity threshold.
Figure 7The self-adaptive participant number.
Figure 8The self-adaptive average stay duration.