| Literature DB >> 31627441 |
Yonghang Jiang1, Bingyi Liu2, Ze Wang3, Xiaoquan Yi4.
Abstract
As one of the most important breakthroughs for modern transportation, the indoor location-based technology has been gradually penetrating into our daily lives and underlines the foundation of the Internet of Things (IoT). To improve the positioning accuracy and efficiency, crowdsourcing has been widely applied in indoor localization in recent years. However, the crowdsourced data can hardly be fused easily to enable usable applications for the reason that the data are collected by different users, in different locations, at different times, with different noises and distortions. Although different data fusing methods have been implemented in different crowdsourcing services, we find that they may not fully leverage the data collected from multiple dimensions that can potentially lead to a better fusion results. In order to address this problem, we propose a more general solution, which can fuse the multi-dimensional crowdsourced data together and align them with the consistent time and location stamps, by using the features of the sensory data only, and thus build high quality crowdsourcing services from the raw data samplings collected from the environment. Finally, we conduct extensive evaluations and experiments using different commercial devices to validate the effectiveness of the method we proposed.Entities:
Keywords: crowdsourcing; data fusion; indoor localization; internet of things
Year: 2019 PMID: 31627441 PMCID: PMC6833012 DOI: 10.3390/s19204518
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Gradient of AP signal and magnetic field in ideal models.
Figure 2Mechanism overview.
Figure 3Illustration of the multi-resolution building map.
Figure 4Trace coding projects a raw moving trace to a grid-based 8-directional chain coded presentation.
Figure 5Illustration of different trace transformation operations.
Figure 6The ground truth of the floor plan for the 5th floor and the 2nd floor.
Figure 7Accelerations of climbing stairs.
Figure 8Accelerations of taking elevators.
Figure 9The ambient data map on different dimensions.
Figure 10An example of the trace alignment result.
Figure 11Map reconstruction with the aligned data traces.
Figure 12Location deviation of crowdsourced traces.