Title
Managing Sensor Data on Urban Traffic
Abstract
Sensor data on traffic events have prompted a wide range of research issues, related with the so-called ITS (Intelligent Transportation Systems). Data are delivered for both static (fixed) and mobile (embarked) sensors, generating large and complex spatio-temporal series. Research efforts in handling these data range from pattern matching and data mining techniques (for forecasting and trend analysis) to work on database queries (e.g., to construct scenarios). Work on embarked sensors also considers issues on trajectories and moving objects.This paper presents a new kind of framework to manage static sensor data. Our work is based on combining research on analytical methods to process sensor data, and database procedures to query these data. The first component is geared towards supporting pattern matching, whereas the second deals with spatio-temporal database issues. This allows distinct granularities and modalities of analysis of sensor data in space and time. This work was conducted within a project that uses real data, with test conducted on 1000 sensors, during 3 years, in a large French city.
Year
DOI
Venue
2008
10.1007/978-3-540-87991-6_45
ER Workshops
Keywords
Field
DocType
sensor data,static sensor data,data range,research effort,database query,research issue,database procedure,pattern matching,urban traffic,data mining technique,intelligent transportation systems,trend analysis,data mining
Modalities,Data mining,Trend analysis,Computer science,Database design,Intelligent transportation system,Pattern matching,Database
Conference
Volume
ISSN
Citations 
5232
0302-9743
2
PageRank 
References 
Authors
0.37
12
4
Name
Order
Citations
PageRank
Claudia Bauzer Medeiros1680138.63
Marc Joliveau2346.86
Geneviève Jomier328186.73
Florian Vuyst420.71