This paper investigates the use of unlabeled data to help la-beled data for audio-visual event recognition in meetings. To deal with situations in which it is difficult to collect enough labeled data to capture event characteristics, but collecting a large amount of unlabeled data is easy, we present a semi-supervised framework using HMM adaptation techniques. Instead of directly training one model for each event, we first train a well-estimated general event model for all events using both labeled and unlabeled data, and then adapt the general model to each specific event model using its own labeled data. We illustrate the proposed approach with a set of eight audio-visual events defined in meetings. Exper-iments and comparison with the fu...
Non-speech acoustic event detection (AED) aims to recognize events that are relevant to human activi...
The detection of the acoustic events (AEs) that are naturally produced in a meeting room may help t...
In this paper, we discuss meetings as an application domain for multimedia content analysis. Meeting...
This paper investigates the use of unlabeled data to help labeled data for audio-visual event recogn...
This paper investigates the use of unlabeled data to help labeled data for audio-visual event recogn...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...
In this paper we introduce a new method for recognizing meeting events. In the present case the boun...
We address the problem of temporal unusual event detection. Unusual events are characterized by a nu...
Abstract—This paper investigates the recognition of group actions in meetings. A framework is employ...
Automatic segmentation and classification of recorded meet-ings provides a basis that enables effect...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...
Hidden Markov Models have been employed in many vision applications to model and identi...
To recognise just the same human reaction (for example, a strong excitement) in different contexts, ...
To recognise just the same human reaction (for example, a strong excitement) in different contexts, ...
We address the problem of recognizing sequences of human interaction patterns in meetings, with the ...
Non-speech acoustic event detection (AED) aims to recognize events that are relevant to human activi...
The detection of the acoustic events (AEs) that are naturally produced in a meeting room may help t...
In this paper, we discuss meetings as an application domain for multimedia content analysis. Meeting...
This paper investigates the use of unlabeled data to help labeled data for audio-visual event recogn...
This paper investigates the use of unlabeled data to help labeled data for audio-visual event recogn...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...
In this paper we introduce a new method for recognizing meeting events. In the present case the boun...
We address the problem of temporal unusual event detection. Unusual events are characterized by a nu...
Abstract—This paper investigates the recognition of group actions in meetings. A framework is employ...
Automatic segmentation and classification of recorded meet-ings provides a basis that enables effect...
Audio-visual event detection aims to identify semantically defined events that reveal human activiti...
Hidden Markov Models have been employed in many vision applications to model and identi...
To recognise just the same human reaction (for example, a strong excitement) in different contexts, ...
To recognise just the same human reaction (for example, a strong excitement) in different contexts, ...
We address the problem of recognizing sequences of human interaction patterns in meetings, with the ...
Non-speech acoustic event detection (AED) aims to recognize events that are relevant to human activi...
The detection of the acoustic events (AEs) that are naturally produced in a meeting room may help t...
In this paper, we discuss meetings as an application domain for multimedia content analysis. Meeting...