This work investigates classification of emotions from MoCap full-body data by using Convolutional Neural Networks (CNN). Rather than addressing regular day to day activities, we focus on a more complex type of full-body movement - dance. For this purpose, a new dataset was created which contains short excerpts of the performances of professional dancers who interpreted four emotional states: anger, happiness, sadness, and insecurity. Fourteen minutes of motion capture data are used to explore different CNN architectures and data representations. The results of the four-class classification task are up to 0.79 (F1 score) on test data of other performances by the same dancers. Hence, through deep learning, this paper proposes a novel and effective method of emotion classification which can be exploited in affective interfaces.
From motions to emotions: Classification of Affect from Dance Movements using Deep Learning
Sukumar Karumuri;Gualtiero Volpe;Radoslaw Niewiadomski;Antonio Camurri
2019-01-01
Abstract
This work investigates classification of emotions from MoCap full-body data by using Convolutional Neural Networks (CNN). Rather than addressing regular day to day activities, we focus on a more complex type of full-body movement - dance. For this purpose, a new dataset was created which contains short excerpts of the performances of professional dancers who interpreted four emotional states: anger, happiness, sadness, and insecurity. Fourteen minutes of motion capture data are used to explore different CNN architectures and data representations. The results of the four-class classification task are up to 0.79 (F1 score) on test data of other performances by the same dancers. Hence, through deep learning, this paper proposes a novel and effective method of emotion classification which can be exploited in affective interfaces.| File | Dimensione | Formato | |
|---|---|---|---|
| 2019_conferences_chi_1.pdf accesso aperto 
											Tipologia:
											Documento in versione editoriale
										 
										Dimensione
										1.21 MB
									 
										Formato
										Adobe PDF
									 | 1.21 MB | Adobe PDF | Visualizza/Apri | 
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.



