Correlation Analysis between Subjectively Annotated Emotions and Objectively Annotated Emotions

URI http://harp.lib.hiroshima-u.ac.jp/hiroshima-cu/metadata/12515
File
Title
Correlation Analysis between Subjectively Annotated Emotions and Objectively Annotated Emotions
Author
氏名 SAITOU Shota
ヨミ サイトウ ショウタ
別名 齋藤 晶太
氏名 MERA Kazuya
ヨミ メラ カズヤ
別名 目良 和也
氏名 KUROSAWA Yoshiaki
ヨミ クロサワ ヨシアキ
別名 黒澤 義明
氏名 TAKEZAWA Toshiyuki
ヨミ タケザワ トシユキ
別名 竹澤 寿幸
Subject
self-reported emotion
objectively perceived emotion
emotional voice
machine learning
Abstract

There is no research for analyzing the relationship between subjectively annotated emotions and objectively annotated emotions despite the fact that a lot of research uses objective emotion labels as subjective emotions. In this study, we collect natural emotional voices, and the speaker and others annotate the intensity of six emotions {anger, dislike, fear, happiness, sadness, and surprise} to the voices. The correlation diagrams between subjectively and objectively annotated emotions indicate that there is a small relationship between subjective and objective emotions. The experimental results using support vector regression reveal that learning subjective emotions is much more difficult than learning objective emotions. Furthermore, happiness, sadness, and surprise are comparatively learned better than dislike, anger, and fear.

Description

International MultiConference of Engineers and Computer Scientists 2019(IMECS 2019), Mar. 13-15, 2019, Hong Kong

Description Peer Reviewed
Journal Title
Proceedings of the International MultiConference of Engineers and Computer Scientists 2019 (IMECS 2019)
Spage
[141]
Epage
[146]
Published Date
2019.3
Publisher
The International Association of Engineers (IAENG)
ISSN
20780958
20780966
ISBN
9789881404855
Language
eng
NIIType
Conference Paper
Text Version
出版社版
Set
hiroshima-cu