by Roman Pflugfelder
Abstract:
This report presents an unusual event recognition approach in the field of traffic surveillance. Such events are unusual traffic behaviour like traffic jams, accidents or ghost drivers. An interest-point based tracking algorithm (KLT-tracker) is discussed which pursues features on vehicles through a static camera scene. Tracking data can be collected by observing normal traffic. Then, this data is used to learn a spatio-temporal model of normal traffic behaviour. Thereby, training samples are generated in a learning space by the tracking data. Thus, the spherical probability density function (p.d.f.) of the space can be estimated. We use a Growing Neural Gas in combination with a MDL-based pruning algorithm for unsupervised learning. The former method belongs to the class of soft-competitive algorithms which overcome the problems of stranded reference vectors. In contrast to other works, the number of reference vectors has not to be constant. The algorithm finds an optimal codebook according to the MDL-principle. As the p.d.f. only describes points and not trajectories of normal traffic behaviour, behaviour classes of normal traffic have to be learnt additionally. This work presents a novel approach by using the topology of the learning space which is created by Competitive Hebbian Learning. Beside the necessity of recognizing unusual events, it can also be used to analyze the behaviour of drivers at traffic sites like intersections or road works.
Reference:
Visual Traffic Surveillance Using Real-time Tracking (Roman Pflugfelder), Technical report, PRIP, TU Wien, 2002.
Bibtex Entry:
@TechReport{TR071,
author = "Roman Pflugfelder",
institution = "PRIP, TU Wien",
number = "PRIP-TR-071",
title = "Visual {T}raffic {S}urveillance {U}sing {R}eal-time
{T}racking",
year = "2002",
url = "https://www.prip.tuwien.ac.at/pripfiles/trs/tr71.pdf",
abstract = "This report presents an unusual event recognition
approach in the field of traffic surveillance. Such
events are unusual traffic behaviour like traffic
jams, accidents or ghost drivers. An interest-point
based tracking algorithm (KLT-tracker) is discussed
which pursues features on vehicles through a static
camera scene. Tracking data can be collected by
observing normal traffic. Then, this data is used to
learn a spatio-temporal model of normal traffic
behaviour. Thereby, training samples are generated
in a learning space by the tracking data. Thus, the
spherical probability density function (p.d.f.) of
the space can be estimated. We use a Growing Neural
Gas in combination with a MDL-based pruning
algorithm for unsupervised learning. The former
method belongs to the class of soft-competitive
algorithms which overcome the problems of stranded
reference vectors. In contrast to other works, the
number of reference vectors has not to be
constant. The algorithm finds an optimal codebook
according to the MDL-principle. As the p.d.f. only
describes points and not trajectories of normal
traffic behaviour, behaviour classes of normal
traffic have to be learnt additionally. This work
presents a novel approach by using the topology of
the learning space which is created by Competitive
Hebbian Learning. Beside the necessity of
recognizing unusual events, it can also be used to
analyze the behaviour of drivers at traffic sites
like intersections or road works. ",
}