Detecting Abnormal Vehicular Dynamics at Intersections Based on an Unsupervised Learning Approach and a Stochastic Model

This investigation demonstrates an unsupervised approach for modeling traffic flow and detecting abnormal vehicle behaviors at intersections. In the first stage, the approach reveals and records the different states of the system. These states are the result of coding and grouping the historical mot...

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Main Authors: Teresa Garcia-Ramírez, Hugo Jiménez-Hernández, Jose-Joel González-Barbosa
Format: Article
Language:English
Published: MDPI AG 2010-08-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/10/8/7576/
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spelling doaj-b9c948ec60df4da9b52ad4ca0e67f33e2020-11-25T00:20:33ZengMDPI AGSensors1424-82202010-08-011087576760110.3390/s100807576Detecting Abnormal Vehicular Dynamics at Intersections Based on an Unsupervised Learning Approach and a Stochastic ModelTeresa Garcia-RamírezHugo Jiménez-HernándezJose-Joel González-BarbosaThis investigation demonstrates an unsupervised approach for modeling traffic flow and detecting abnormal vehicle behaviors at intersections. In the first stage, the approach reveals and records the different states of the system. These states are the result of coding and grouping the historical motion of vehicles as long binary strings. In the second stage, using sequences of the recorded states, a stochastic graph model based on a Markovian approach is built. A behavior is labeled abnormal when current motion pattern cannot be recognized as any state of the system or a particular sequence of states cannot be parsed with the stochastic model. The approach is tested with several sequences of images acquired from a vehicular intersection where the traffic flow and duration used in connection with the traffic lights are continuously changed throughout the day. Finally, the low complexity and the flexibility of the approach make it reliable for use in real time systems. http://www.mdpi.com/1424-8220/10/8/7576/abnormal activities detectionunsupervised learninglong binary strings
collection DOAJ
language English
format Article
sources DOAJ
author Teresa Garcia-Ramírez
Hugo Jiménez-Hernández
Jose-Joel González-Barbosa
spellingShingle Teresa Garcia-Ramírez
Hugo Jiménez-Hernández
Jose-Joel González-Barbosa
Detecting Abnormal Vehicular Dynamics at Intersections Based on an Unsupervised Learning Approach and a Stochastic Model
Sensors
abnormal activities detection
unsupervised learning
long binary strings
author_facet Teresa Garcia-Ramírez
Hugo Jiménez-Hernández
Jose-Joel González-Barbosa
author_sort Teresa Garcia-Ramírez
title Detecting Abnormal Vehicular Dynamics at Intersections Based on an Unsupervised Learning Approach and a Stochastic Model
title_short Detecting Abnormal Vehicular Dynamics at Intersections Based on an Unsupervised Learning Approach and a Stochastic Model
title_full Detecting Abnormal Vehicular Dynamics at Intersections Based on an Unsupervised Learning Approach and a Stochastic Model
title_fullStr Detecting Abnormal Vehicular Dynamics at Intersections Based on an Unsupervised Learning Approach and a Stochastic Model
title_full_unstemmed Detecting Abnormal Vehicular Dynamics at Intersections Based on an Unsupervised Learning Approach and a Stochastic Model
title_sort detecting abnormal vehicular dynamics at intersections based on an unsupervised learning approach and a stochastic model
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2010-08-01
description This investigation demonstrates an unsupervised approach for modeling traffic flow and detecting abnormal vehicle behaviors at intersections. In the first stage, the approach reveals and records the different states of the system. These states are the result of coding and grouping the historical motion of vehicles as long binary strings. In the second stage, using sequences of the recorded states, a stochastic graph model based on a Markovian approach is built. A behavior is labeled abnormal when current motion pattern cannot be recognized as any state of the system or a particular sequence of states cannot be parsed with the stochastic model. The approach is tested with several sequences of images acquired from a vehicular intersection where the traffic flow and duration used in connection with the traffic lights are continuously changed throughout the day. Finally, the low complexity and the flexibility of the approach make it reliable for use in real time systems.
topic abnormal activities detection
unsupervised learning
long binary strings
url http://www.mdpi.com/1424-8220/10/8/7576/
work_keys_str_mv AT teresagarciaramirez detectingabnormalvehiculardynamicsatintersectionsbasedonanunsupervisedlearningapproachandastochasticmodel
AT hugojimenezhernandez detectingabnormalvehiculardynamicsatintersectionsbasedonanunsupervisedlearningapproachandastochasticmodel
AT josejoelgonzalezbarbosa detectingabnormalvehiculardynamicsatintersectionsbasedonanunsupervisedlearningapproachandastochasticmodel
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