Publications
Toward detecting emotions in spoken dialogs
Abstract
The importance of automatically recognizing emotions from human speech has grown with the increasing role of spoken language interfaces in human-computer interaction applications. This paper explores the detection of domain-specific emotions using language and discourse information in conjunction with acoustic correlates of emotion in speech signals. The specific focus is on a case study of detecting negative and non-negative emotions using spoken language data obtained from a call center application. Most previous studies in emotion recognition have used only the acoustic information contained in speech. In this paper, a combination of three sources of information-acoustic, lexical, and discourse-is used for emotion recognition. To capture emotion information at the language level, an information-theoretic notion of emotional salience is introduced. Optimization of the acoustic correlates of emotion with …
- Date
- 2005
- Authors
- Chul Min Lee, Shrikanth S Narayanan
- Journal
- IEEE transactions on speech and audio processing
- Volume
- 13
- Issue
- 2
- Pages
- 293-303
- Publisher
- IEEE