@inproceedings{CI-Brun2013,
title = {Learning and classification of car trajectories in road video by string kernels},
author = {Luc Brun and Alessia Saggese and Mario Vento},
year = {2013},
date = {2013-01-01},
booktitle = {Proceedings of the International Conference on Computer Vision Theory and Applications (V.I.S.A.P.P)},
address={Barcelona, Spain},
pages = {709-714},
keywords = {Video analysis and interpretation},
theme="pattern",
abstract= {An abnormal behavior of a moving vehicule or a moving
person is characterized by an unusual or not
expected trajectory. The definition of exptected
trajectories refers to supervised learning where an
human operator should define expected
behaviors. Conversely, definition of usual
trajectories, requires to learn automatically the
dynamic of a scene in order to extract its typical
trajectories. We propose, in this paper, a method
able to identify abnormal behaviors based on a new
unsupervised learning algorithm. The original
contributions of the paper lies in the following
aspects: first, the evaluation of similarities
between trajectories is based on string
kernels. Such kernels allow us to define a
kernel-based clustering algorithm in order to obtain
groups of similar trajectories. Finally,
identification of abnormal trajectories is performed
according to the typical trajectories characterized
during the clustering step. The method has been
evaluated on a real dataset and comparisons with
other state-of-the-arts methods confirm its
efficiency.},
url= {paper:=https://brunl01.users.greyc.fr/ARTICLES/visapp2013.pdf}
}