Detecting Different Road Infrastructural Elements Based on the Stochastic Characterization of Speed Patterns
The automatic detection of road related information using data from sensors while driving has many potential applications such as traffic congestion detection or automatic routable map generation. This paper focuses on the automatic detection of road elements based on GPS data from on-vehicle system...
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Series: | Journal of Advanced Transportation |
Online Access: | http://dx.doi.org/10.1155/2017/3802807 |
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doaj-01d49319cc9f41d9ad4b37f567d890bc2020-11-25T00:30:17ZengHindawi-WileyJournal of Advanced Transportation0197-67292042-31952017-01-01201710.1155/2017/38028073802807Detecting Different Road Infrastructural Elements Based on the Stochastic Characterization of Speed PatternsMario Muñoz-Organero0Ramona Ruiz-Blázquez1Telematics Engineering Department, Carlos III University of Madrid, Madrid, SpainTelematics Engineering Department, Carlos III University of Madrid, Madrid, SpainThe automatic detection of road related information using data from sensors while driving has many potential applications such as traffic congestion detection or automatic routable map generation. This paper focuses on the automatic detection of road elements based on GPS data from on-vehicle systems. A new algorithm is developed that uses the total variation distance instead of the statistical moments to improve the classification accuracy. The algorithm is validated for detecting traffic lights, roundabouts, and street-crossings in a real scenario and the obtained accuracy (0.75) improves the best results using previous approaches based on statistical moments based features (0.71). Each road element to be detected is characterized as a vector of speeds measured when a driver goes through it. We first eliminate the speed samples in congested traffic conditions which are not comparable with clear traffic conditions and would contaminate the dataset. Then, we calculate the probability mass function for the speed (in 1 m/s intervals) at each point. The total variation distance is then used to find the similarity among different points of interest (which can contain a similar road element or a different one). Finally, a k-NN approach is used for assigning a class to each unlabelled element.http://dx.doi.org/10.1155/2017/3802807 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mario Muñoz-Organero Ramona Ruiz-Blázquez |
spellingShingle |
Mario Muñoz-Organero Ramona Ruiz-Blázquez Detecting Different Road Infrastructural Elements Based on the Stochastic Characterization of Speed Patterns Journal of Advanced Transportation |
author_facet |
Mario Muñoz-Organero Ramona Ruiz-Blázquez |
author_sort |
Mario Muñoz-Organero |
title |
Detecting Different Road Infrastructural Elements Based on the Stochastic Characterization of Speed Patterns |
title_short |
Detecting Different Road Infrastructural Elements Based on the Stochastic Characterization of Speed Patterns |
title_full |
Detecting Different Road Infrastructural Elements Based on the Stochastic Characterization of Speed Patterns |
title_fullStr |
Detecting Different Road Infrastructural Elements Based on the Stochastic Characterization of Speed Patterns |
title_full_unstemmed |
Detecting Different Road Infrastructural Elements Based on the Stochastic Characterization of Speed Patterns |
title_sort |
detecting different road infrastructural elements based on the stochastic characterization of speed patterns |
publisher |
Hindawi-Wiley |
series |
Journal of Advanced Transportation |
issn |
0197-6729 2042-3195 |
publishDate |
2017-01-01 |
description |
The automatic detection of road related information using data from sensors while driving has many potential applications such as traffic congestion detection or automatic routable map generation. This paper focuses on the automatic detection of road elements based on GPS data from on-vehicle systems. A new algorithm is developed that uses the total variation distance instead of the statistical moments to improve the classification accuracy. The algorithm is validated for detecting traffic lights, roundabouts, and street-crossings in a real scenario and the obtained accuracy (0.75) improves the best results using previous approaches based on statistical moments based features (0.71). Each road element to be detected is characterized as a vector of speeds measured when a driver goes through it. We first eliminate the speed samples in congested traffic conditions which are not comparable with clear traffic conditions and would contaminate the dataset. Then, we calculate the probability mass function for the speed (in 1 m/s intervals) at each point. The total variation distance is then used to find the similarity among different points of interest (which can contain a similar road element or a different one). Finally, a k-NN approach is used for assigning a class to each unlabelled element. |
url |
http://dx.doi.org/10.1155/2017/3802807 |
work_keys_str_mv |
AT mariomunozorganero detectingdifferentroadinfrastructuralelementsbasedonthestochasticcharacterizationofspeedpatterns AT ramonaruizblazquez detectingdifferentroadinfrastructuralelementsbasedonthestochasticcharacterizationofspeedpatterns |
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