This paper proposes the exploitation of a dynamic programming technique for efficiently comparing people trajectories adopting an encoding scheme that jointly takes into account both the direction and the velocity of movement. With this approach, each pair of trajectories in the training set is compared and the corresponding distance computed. Clustering is achieved by using the k-medoids algorithm and each cluster is modeled with a 1-D Gaussian over the distance from the medoid. A MAP framework is adopted for the testing phase. The reported results are encouraging
International audienceThis work aims to identify abnormal behaviors from the analysis of humans or v...
k-means algorithm is one of the basic clustering techniques that is used in many data mining applica...
We treat the problem of movement prediction as a classification task. We assume the existence of a (...
This paper proposes the exploitation of a dynamic programming technique for efficiently comparing pe...
The paper investigates the possibilities of using clustering techniques in visual exploration and an...
We propose a method to classify human trajectories, modeled by a set of motion vector fields, each t...
We investigate a data-driven approach to robotic path planning and analyze its performance in the co...
ABSTRACT Today portable devices as mobile phones, laptops, personal digital assistants(PDAs), and ...
Location-aware devices are one of the examples of variety of systems that can provide trajectory dat...
The paper deals with the clustering of trajectories of moving objects. A k-means-like algorithm bas...
The main objective of this paper is to develop an efficient method for learning and reproduction of ...
This paper describes the trajectory learning component of a programming by demonstration (PbD) syste...
In this paper we propose a classification model for moving objectstrajectories. We assume that the c...
Data mining is a powerful emerging technology that helps to extract hidden information from a huge v...
Abstract:Data mining is a powerful emerging technology that helps to extract hidden information from...
International audienceThis work aims to identify abnormal behaviors from the analysis of humans or v...
k-means algorithm is one of the basic clustering techniques that is used in many data mining applica...
We treat the problem of movement prediction as a classification task. We assume the existence of a (...
This paper proposes the exploitation of a dynamic programming technique for efficiently comparing pe...
The paper investigates the possibilities of using clustering techniques in visual exploration and an...
We propose a method to classify human trajectories, modeled by a set of motion vector fields, each t...
We investigate a data-driven approach to robotic path planning and analyze its performance in the co...
ABSTRACT Today portable devices as mobile phones, laptops, personal digital assistants(PDAs), and ...
Location-aware devices are one of the examples of variety of systems that can provide trajectory dat...
The paper deals with the clustering of trajectories of moving objects. A k-means-like algorithm bas...
The main objective of this paper is to develop an efficient method for learning and reproduction of ...
This paper describes the trajectory learning component of a programming by demonstration (PbD) syste...
In this paper we propose a classification model for moving objectstrajectories. We assume that the c...
Data mining is a powerful emerging technology that helps to extract hidden information from a huge v...
Abstract:Data mining is a powerful emerging technology that helps to extract hidden information from...
International audienceThis work aims to identify abnormal behaviors from the analysis of humans or v...
k-means algorithm is one of the basic clustering techniques that is used in many data mining applica...
We treat the problem of movement prediction as a classification task. We assume the existence of a (...