Best Paper AwardInternational audienceThis paper proposes a novel audiovisual tracking approach that exploits constructively audio and visual modalities in order to estimate trajectories of multiple people in a joint state space. The tracking problem is modeled using a sequential Bayesian filtering framework. Within this framework, we propose to represent the posterior density with a Gaussian Mixture Model (GMM). To ensure that a GMM representation can be retained sequentially over time, the predictive density is approximated by a GMM using the Unscented Transform. While a density interpolation technique is introduced to obtain a continuous representation of the observation likelihood, which is also a GMM. Furthermore, to prevent the number...
The probability hypothesis density (PHD) filter based on sequential Monte Carlo (SMC) approximation...
We presents a PHD filtering approach to estimate the state of an unknown number of persons in a vide...
International audienceIn this paper we address the problem of simultaneously tracking several moving...
Best Paper AwardInternational audienceThis paper proposes a novel audiovisual tracking approach that...
This paper proposes a novel audio-visual tracking approach that exploits constructively audio and vi...
A new method is presented for integration of audio and visual information in multiple target trackin...
International audienceIn this paper we address the problem of tracking multiple speakers via the fus...
International audienceMultiple-speaker tracking is a crucial task for many applications. In real-wor...
Audio-visual tracking of multiple speakers requires to estimate the state (e.g. velocity and locatio...
In this paper we address the problem of simultaneously tracking several moving audio sources, namely...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
International audienceAny multi-party conversation system benefits from speaker diarization, that is...
Audio-visual tracking of an unknown number of concurrent speakers in 3D is a challenging task, espec...
This thesis represents Bayesian joint audio-visual tracking for the 3D locations of multiple people ...
Target tracking is a broad subject area extensively studied in many engineering disciplines. In this...
The probability hypothesis density (PHD) filter based on sequential Monte Carlo (SMC) approximation...
We presents a PHD filtering approach to estimate the state of an unknown number of persons in a vide...
International audienceIn this paper we address the problem of simultaneously tracking several moving...
Best Paper AwardInternational audienceThis paper proposes a novel audiovisual tracking approach that...
This paper proposes a novel audio-visual tracking approach that exploits constructively audio and vi...
A new method is presented for integration of audio and visual information in multiple target trackin...
International audienceIn this paper we address the problem of tracking multiple speakers via the fus...
International audienceMultiple-speaker tracking is a crucial task for many applications. In real-wor...
Audio-visual tracking of multiple speakers requires to estimate the state (e.g. velocity and locatio...
In this paper we address the problem of simultaneously tracking several moving audio sources, namely...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
International audienceAny multi-party conversation system benefits from speaker diarization, that is...
Audio-visual tracking of an unknown number of concurrent speakers in 3D is a challenging task, espec...
This thesis represents Bayesian joint audio-visual tracking for the 3D locations of multiple people ...
Target tracking is a broad subject area extensively studied in many engineering disciplines. In this...
The probability hypothesis density (PHD) filter based on sequential Monte Carlo (SMC) approximation...
We presents a PHD filtering approach to estimate the state of an unknown number of persons in a vide...
International audienceIn this paper we address the problem of simultaneously tracking several moving...