International audienceThis work aims to identify abnormal behaviors from the analysis of humans or vehicles' trajectories. A set of normal trajectories' prototypes is extracted by means of a novel unsupervised learning technique: the scene is adaptively partitioned into zones by using the distribution of the training set and each trajectory is represented as a sequence of symbols by taking into account positional information (the zones crossed in the scene), speed and shape. The main novelties of this work are the following: first, the similarity between trajectories is evaluated by means of a kernel-based approach. Furthermore, we define a novel and efficient kernel-based clustering algorithm, aimed at obtaining groups of normal trajectori...
The data mining from spatio-temporal trajectories of moving objects has been paid much attention sin...
Data mining is a powerful emerging technology that helps to extract hidden information from a huge v...
Abstract—This paper presents a novel technique for clustering of video motion clips using coefficien...
International audienceThis work aims to identify abnormal behaviors from the analysis of humans or v...
International audienceAn abnormal behavior of a moving vehicule or a moving person is characterized ...
International audienceAn abnormal behavior of a moving vehicule or a moving person is characterized ...
Abstract—This work aims at dynamically understanding the properties of a scene from the analysis of ...
Recently, surveillance on moving vehicles for traffic flow monitoring has emerging in rapid rate. A ...
Recently, surveillance on moving vehicles for traffic flow monitoring has emerging in rapid rate. A ...
This paper proposes a novel application of Visual Assessment of Tendency (VAT)-based hierarchical cl...
In this paper, we proposed a hierarchical clustering frame-work to classify vehicle motion trajector...
In this paper, we propose to improve trajectory shape analysis by explicitly considering the speed a...
The data mining from spatio-temporal trajectories of moving objects has been paid much attention sin...
In this paper, we propose to improve trajectory shape analysis by explicitly considering the speed a...
The data mining from spatio-temporal trajectories of moving objects has been paid much attention sin...
The data mining from spatio-temporal trajectories of moving objects has been paid much attention sin...
Data mining is a powerful emerging technology that helps to extract hidden information from a huge v...
Abstract—This paper presents a novel technique for clustering of video motion clips using coefficien...
International audienceThis work aims to identify abnormal behaviors from the analysis of humans or v...
International audienceAn abnormal behavior of a moving vehicule or a moving person is characterized ...
International audienceAn abnormal behavior of a moving vehicule or a moving person is characterized ...
Abstract—This work aims at dynamically understanding the properties of a scene from the analysis of ...
Recently, surveillance on moving vehicles for traffic flow monitoring has emerging in rapid rate. A ...
Recently, surveillance on moving vehicles for traffic flow monitoring has emerging in rapid rate. A ...
This paper proposes a novel application of Visual Assessment of Tendency (VAT)-based hierarchical cl...
In this paper, we proposed a hierarchical clustering frame-work to classify vehicle motion trajector...
In this paper, we propose to improve trajectory shape analysis by explicitly considering the speed a...
The data mining from spatio-temporal trajectories of moving objects has been paid much attention sin...
In this paper, we propose to improve trajectory shape analysis by explicitly considering the speed a...
The data mining from spatio-temporal trajectories of moving objects has been paid much attention sin...
The data mining from spatio-temporal trajectories of moving objects has been paid much attention sin...
Data mining is a powerful emerging technology that helps to extract hidden information from a huge v...
Abstract—This paper presents a novel technique for clustering of video motion clips using coefficien...