International audienceAddressee detection is one of the most fundamental tasks for seamless dialogue management and turn taking in human-agent interaction. Whereas addressee detection is implicit in dyadic interaction, it becomes a challenging task in multiparty interactions when more than two participants are involved. Existing research works employ either rule-based or statistical approaches for addressee detection. However, most of these works either have been tested on a single data set or only support a fixed number of participants. In this article, we propose a model based on generic features to predict the addressee in data sets with varying number of participants. The results tested on two different corpora show that the proposed mo...
This paper describes a multi-modal corpus of hand-annotated meeting dialogues that was designed for ...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Relating statistical machine learning approaches to the automatic analysis of multiparty communicati...
International audienceAddressee detection is an important challenge to tackle in order to improve di...
Several algorithms have recently been proposed for recognizing addressees in a group conversational ...
Several algorithms have recently been proposed for recognizing addressees in a group conversational ...
We present results on addressee identification in four-participants face-to-face meetings using Ba...
We present results on addressee identification in four-participants face-to-face meetings using Baye...
Abstract-The goal of addressee detection is to answer the question, "Are you talking to me?&quo...
In this paper, we investigate the task of addressee estimation in multi-party interactions. For ever...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
This paper describes a multi-modal corpus of hand-annotated meeting dialogues that was designed for ...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Relating statistical machine learning approaches to the automatic analysis of multiparty communicati...
International audienceAddressee detection is an important challenge to tackle in order to improve di...
Several algorithms have recently been proposed for recognizing addressees in a group conversational ...
Several algorithms have recently been proposed for recognizing addressees in a group conversational ...
We present results on addressee identification in four-participants face-to-face meetings using Ba...
We present results on addressee identification in four-participants face-to-face meetings using Baye...
Abstract-The goal of addressee detection is to answer the question, "Are you talking to me?&quo...
In this paper, we investigate the task of addressee estimation in multi-party interactions. For ever...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
This paper describes a multi-modal corpus of hand-annotated meeting dialogues that was designed for ...
Against the background of developments in the area of speech-based and multimodal interfaces, we pre...
Relating statistical machine learning approaches to the automatic analysis of multiparty communicati...