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Trend-Residual Dual Modeling for Detection of Outliers in Low-Cost GPS Trajectories

Authors :
Tingting Cui
Jianwei Peng
Xiaojian Chen
Jianhong Fu
Jie Shan
Source :
Sensors; Volume 16; Issue 12; Pages: 2036, Sensors, Vol 16, Iss 12, p 2036 (2016), Sensors (Basel, Switzerland)
Publication Year :
2016
Publisher :
Multidisciplinary Digital Publishing Institute, 2016.

Abstract

Low-cost GPS (receiver) has become a ubiquitous and integral part of our daily life. Despite noticeable advantages such as being cheap, small, light, and easy to use, its limited positioning accuracy devalues and hampers its wide applications for reliable mapping and analysis. Two conventional techniques to remove outliers in a GPS trajectory are thresholding and Kalman-based methods, which are difficult in selecting appropriate thresholds and modeling the trajectories. Moreover, they are insensitive to medium and small outliers, especially for low-sample-rate trajectories. This paper proposes a model-based GPS trajectory cleaner. Rather than examining speed and acceleration or assuming a pre-determined trajectory model, we first use cubic smooth spline to adaptively model the trend of the trajectory. The residuals, i.e., the differences between the trend and GPS measurements, are then further modeled by time series method. Outliers are detected by scoring the residuals at every GPS trajectory point. Comparing to the conventional procedures, the trend-residual dual modeling approach has the following features: (a) it is able to model trajectories and detect outliers adaptively; (b) only one critical value for outlier scores needs to be set; (c) it is able to robustly detect unapparent outliers; and (d) it is effective in cleaning outliers for GPS trajectories with low sample rates. Tests are carried out on three real-world GPS trajectories datasets. The evaluation demonstrates an average of 9.27 times better performance in outlier detection for GPS trajectories than thresholding and Kalman-based techniques.

Details

Language :
English
ISSN :
14248220
Database :
OpenAIRE
Journal :
Sensors; Volume 16; Issue 12; Pages: 2036
Accession number :
edsair.doi.dedup.....89c95258e0fe74e2748745226c27a2ed
Full Text :
https://doi.org/10.3390/s16122036