Back to Search
Start Over
Machines outperform laypersons in recognizing emotions elicited by autobiographical recollection
- Publication Year :
- 2013
-
Abstract
- Over the last decade, an increasing number of studies have focused on automated recognition of human emotions by machines. However, performances of machine emotion recognition studies are difficult to interpret because benchmarks have not been established. To provide such a benchmark, we compared machine with human emotion recognition. We gathered facial expressions, speech, and physiological signals from 17 individuals expressing 5 different emotional states. Support vector machines achieved an 82% recognition accuracy based on physiological and facial features. In experiments with 75 humans on the same data, a maximum recognition accuracy of 62.8% was obtained. As machines outperformed humans, automated emotion recognition might be ready to be tested in more practical applications.
- Subjects :
- Communication & Information
TS - Technical Sciences
Informatics
Man machine systems
Industrial Innovation
Recognizing emotions
Physiology
High Tech Systems & Materials
Physiological signals
Automated recognition
Recognition accuracy
ComputerApplications_MISCELLANEOUS
Facial Expressions
Emotional state
Emotion recognition
MNS - Media & Network Services
Human emotion recognition
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.dris...00893..361834fe60f1ae5894eb75b1300eb8a3