Redirigiendo al acceso original de articulo en 17 segundos...
ARTÍCULO
TITULO

Filtering Link Outliers in Vehicle Trajectories by Spatial Reasoning

Junli Liu    
Miaomiao Pan    
Xianfeng Song    
Jing Wang    
Kemin Zhu    
Runkui Li    
Xiaoping Rui    
Weifeng Wang    
Jinghao Hu and Venkatesh Raghavan    

Resumen

Vehicle trajectories derived from Global Navigation Satellite Systems (GNSS) are used in various traffic applications based on trajectory quality analysis for the development of successful traffic models. A trajectory consists of points and links that are connected, where both the points and links are subject to positioning errors in the GNSS. Existing trajectory filters focus on point outliers, but neglect link outliers on tracks caused by a long sampling interval. In this study, four categories of link outliers are defined, i.e., radial, drift, clustered, and shortcut; current available algorithms are applied to filter apparent point outliers for the first three categories, and a novel filtering approach is proposed for link outliers of the fourth category in urban areas using spatial reasoning rules without ancillary data. The proposed approach first measures specific geometric properties of links from trajectory databases and then evaluates the similarities of geometric measures among the links, following a set of spatial reasoning rules to determine link outliers. We tested this approach using taxi trajectory datasets for Beijing with a built-in sampling interval of 50 to 65 s. The results show that clustered links (27.14%) account for the majority of link outliers, followed by shortcut (6.53%), radial (3.91%), and drift (0.62%) outliers.

 Artículos similares