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Semantic feature projection for continuous emotion analysis
2014
Proceedings of the ACM International Conference on Multimedia - MM '14
Affective computing researchers have recently been focusing on continuous emotion dimensions like arousal and valence. This dual coordinate affect space can explain many of the discrete emotions like sadness, anger, joy, etc. In the area of continuous emotion recognition, Principal Component Analysis (PCA) models are generally used to enhance the performance of various image and audio features by projecting them to a new space where the new features are less correlated. We instead, propose that
doi:10.1145/2647868.2655042
dblp:conf/mm/LadeMP14
fatcat:wbmvbnrlxjgafoarctsv6hkeye