Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10326579 | Neural Networks | 2005 | 16 Pages |
Abstract
Since the early studies of human behavior, emotion has attracted the interest of researchers in many disciplines of Neurosciences and Psychology. More recently, it is a growing field of research in computer science and machine learning. We are exploring how the expression of emotion is perceived by listeners and how to represent and automatically detect a subject's emotional state in speech. In contrast with most previous studies, conducted on artificial data with archetypal emotions, this paper addresses some of the challenges faced when studying real-life non-basic emotions. We present a new annotation scheme allowing the annotation of emotion mixtures. Our studies of real-life spoken dialogs from two call center services reveal the presence of many blended emotions, dependent on the dialog context. Several classification methods (SVM, decision trees) are compared to identify relevant emotional states from prosodic, disfluency and lexical cues extracted from the real-life spoken human-human interactions.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Laurence Devillers, Laurence Vidrascu, Lori Lamel,