Title :
Collaborative Bike Sensing for Automatic Geographic Enrichment: Geoannotation of road/terrain type by multimodal bike sensing
Author :
Verstockt, Steven ; Slavkovikj, Viktor ; De Potter, Pieterjan ; Van de Walle, Rik
Author_Institution :
Dept. of Electron. & Inf. Syst., Ghent Univ. - iMinds, Ledeberg-Ghent, Belgium
Abstract :
In this article, we describe a multimodal bike-sensing setup for automatic geoannotation of terrain types using Web-based data enrichment. The proposed classification system is mainly based on the analysis of volunteered geographic information gathered by cyclists. By using participatory accelerometer and global positioning system (GPS) sensor data collected from cyclists\´ smartphones, which is enriched with data from geographic Web services, the proposed system is able to distinguish between six different terrain types. For the classification of the Web-based enriched sensor data, the system employs a random decision forest (RDF) (which compared favorably for the geoannotation task against different classification algorithms). The accuracy of the novel bike-sensing system is 92% for six-class road/terrain classification and 97% for two-class on-road/off-road classification. Since the evaluation is performed on large-scale data gathered during real bike runs, these "real-life" accuracies show the feasibility of our novel approach.
Keywords :
Global Positioning System; Web services; accelerometers; geographic information systems; groupware; pattern classification; smart phones; GPS sensor data; Global Positioning System sensor data; RDF; Web-based data enrichment; Web-based enriched sensor data classification; automatic geographic enrichment; bike-sensing system; classification system; collaborative bike sensing; geographic Web services; multimodal bike sensing; participatory accelerometer; random decision forest; road classification; road type geoannotation; smartphones; terrain classification; terrain type geoannotation; volunteered geographic information analysis; Accelerometers; Big data; Global Positioning System; Mobile communication; Roads; Robot sensing systems; Terrain mapping;
Journal_Title :
Signal Processing Magazine, IEEE
DOI :
10.1109/MSP.2014.2329379