• Home > Journal Search > Past Issues

Past Issues

Endnote RefWorks Scholar's Aid Excel TXT
Vol.16, No.1, 117 ~ 125, 2013
Title
Acoustic parameters for induced emotion categorizing and dimensional approach
 
Abstract
This study examined that how precisely MFCC, LPC, energy, and pitch related parameters of the speech data, which have been used mainly for voice recognition system could predict the vocal emotion categories as well as dimensions of vocal emotion. 110 college students participated in this experiment. For more realistic emotional response, we used well defined emotion-inducing stimuli. This study analyzed the relationship between the parameters of MFCC, LPC, energy, and pitch of the speech data and four emotional dimensions (valence, arousal, intensity, and potency). Because dimensional approach is more useful for realistic emotion classification. It results in the best vocal cue parameters for predicting each of dimensions by stepwise multiple regression analysis. Emotion categorizing accuracy analyzed by LDA is 62.7%, and four dimension regression models are statistically significant, p<.001. Consequently, this result showed the possibility that the parameters could also be applied to spontaneous vocal emotion recognition.
Key Words
음성 정서 인식, 정서 인식, 정서 차원 분류, vocal emotion recognition, emotion recognition, dimensional approach
| PDF

로고이미지