Tracking speakers in multiparty conversations constitutes a fundamental task for automatic meeting analysis. In this paper, we present a probabilistic approach to jointly track the location and speaking activity of multiple speakers in a multisensor meeting room, equipped with a small microphone array and multiple uncalibrated cameras. Our framework is based on a mixed-state dynamic graphical model defined on a multiperson state-space, which includes the explicit definition of a proximity-based interaction model. The model integrates audio-visual (AV) data through a novel observation model. Audio observations are derived from a source localization algorithm. Visual observations are based on models of the shape and spatial structure of human...
International audienceAny multi-party conversation system benefits from speaker diarization, that is...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
Relating statistical machine learning approaches to the automatic analysis of multiparty communicat...
Tracking speakers in multi-party conversations represents an important step towards automatic analys...
Tracking speakers in multi-party conversations represents an important step towards automatic analys...
Automatic meeting analysis is an emerging research field. In this paper, we present stochastic algor...
Automatic meeting analysis is an emerging research field. In this paper, we present stochastic algor...
International audienceMultiple-speaker tracking is a crucial task for many applications. In real-wor...
International audienceMultiple-speaker tracking is a crucial task for many applications. In real-wor...
Abstract. In prior work, we developed a speaker tracking system based on an extended Kalman filter u...
International audienceIn this paper we address the problem of tracking multiple speakers via the fus...
International audienceWe address the issue of identifying and localizing individuals in a scene that...
It is often advantageous to track objects in a scene using multimodal information when such informat...
Distant microphones permit to process spontaneous multi-party speech with very little constraints on...
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...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
Relating statistical machine learning approaches to the automatic analysis of multiparty communicat...
Tracking speakers in multi-party conversations represents an important step towards automatic analys...
Tracking speakers in multi-party conversations represents an important step towards automatic analys...
Automatic meeting analysis is an emerging research field. In this paper, we present stochastic algor...
Automatic meeting analysis is an emerging research field. In this paper, we present stochastic algor...
International audienceMultiple-speaker tracking is a crucial task for many applications. In real-wor...
International audienceMultiple-speaker tracking is a crucial task for many applications. In real-wor...
Abstract. In prior work, we developed a speaker tracking system based on an extended Kalman filter u...
International audienceIn this paper we address the problem of tracking multiple speakers via the fus...
International audienceWe address the issue of identifying and localizing individuals in a scene that...
It is often advantageous to track objects in a scene using multimodal information when such informat...
Distant microphones permit to process spontaneous multi-party speech with very little constraints on...
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...
In this thesis, a novel approach is proposed for multi-speaker tracking by integrating audio and vis...
Relating statistical machine learning approaches to the automatic analysis of multiparty communicat...