International audienceObject tracking is an ubiquitous problem in computer vision with many applications in human-machine and human-robot interaction, augmented reality, driving assistance, surveillance, etc. Although thoroughly investigated, tracking multiple persons remains a challenging and an open problem. In this paper, an online variational Bayesian model for multiple-person tracking is proposed. This yields a variational expectation-maximization (VEM) algorithm. The computational efficiency of the proposed method is due to closed-form expressions for both the posterior distributions of the latent variables and for the estimation of the model parameters. A stochastic process that handles person birth and person death enables the track...
Unlike tracking rigid targets, the task of tracking multiple people is very challenging because the ...
In this paper, we address the problem of automatically detecting and tracking a variable number of p...
In this paper, we present an unsupervised probabilistic model and associated estimation algorithm fo...
International audienceObject tracking is an ubiquitous problem in computer vision with many applicat...
International audienceObject tracking is an ubiquitous problem that appears in many applications suc...
This paper considers the problem of tracking multiple humans in video. A solution is proposed which ...
International audienceMulti-person tracking with a robotic platform is one of the cornerstones of hu...
This thesis deals with the problem of online visual tracking of multiple humans in an enclosed envir...
International audienceIn this paper we address the problem of tracking multiple speakers via the fus...
We presents a PHD filtering approach to estimate the state of an unknown number of persons in a vide...
PhD ThesisVideo-based multiple human tracking has played a crucial role in many applications such a...
This paper considers the problem of multiple human target tracking in a sequence of video data. A so...
© 2019 The Authors. Most existing multi-person tracking approaches are affected by lighting conditio...
Thesis (S.M.)--Massachusetts Institute of Technology, School of Architecture and Planning, Program i...
In this article a Bayesian filter approximation is proposed for simultaneous multiple target detecti...
Unlike tracking rigid targets, the task of tracking multiple people is very challenging because the ...
In this paper, we address the problem of automatically detecting and tracking a variable number of p...
In this paper, we present an unsupervised probabilistic model and associated estimation algorithm fo...
International audienceObject tracking is an ubiquitous problem in computer vision with many applicat...
International audienceObject tracking is an ubiquitous problem that appears in many applications suc...
This paper considers the problem of tracking multiple humans in video. A solution is proposed which ...
International audienceMulti-person tracking with a robotic platform is one of the cornerstones of hu...
This thesis deals with the problem of online visual tracking of multiple humans in an enclosed envir...
International audienceIn this paper we address the problem of tracking multiple speakers via the fus...
We presents a PHD filtering approach to estimate the state of an unknown number of persons in a vide...
PhD ThesisVideo-based multiple human tracking has played a crucial role in many applications such a...
This paper considers the problem of multiple human target tracking in a sequence of video data. A so...
© 2019 The Authors. Most existing multi-person tracking approaches are affected by lighting conditio...
Thesis (S.M.)--Massachusetts Institute of Technology, School of Architecture and Planning, Program i...
In this article a Bayesian filter approximation is proposed for simultaneous multiple target detecti...
Unlike tracking rigid targets, the task of tracking multiple people is very challenging because the ...
In this paper, we address the problem of automatically detecting and tracking a variable number of p...
In this paper, we present an unsupervised probabilistic model and associated estimation algorithm fo...