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Personalized Emotion Space for Video Affective Content Representation

Personalized Emotion Space for Video Affective Content Representation
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摘要 A personalized emotion space is proposed to bridge the "affective gap" in video affective content understanding. In order to unify the discrete and dimensional emotion model, fuzzy C-mean (FCM) clustering algorithm is adopted to divide the emotion space. Gaussian mixture model (GMM) is used to determine the membership functions of typical affective subspaces. At every step of modeling the space, the inputs rely completely on the affective experiences recorded by the audiences. The advantages of the improved V-A (Velance-Arousal) emotion model are the per- sonalization, the ability to define typical affective state areas in the V-A emotion space, and the convenience to explicitly express the intensity of each affective state. The experimental results validate the model and show it can be used as a personalized emotion space for video affective content representation. A personalized emotion space is proposed to bridge the "affective gap" in video affective content understanding. In order to unify the discrete and dimensional emotion model, fuzzy C-mean (FCM) clustering algorithm is adopted to divide the emotion space. Gaussian mixture model (GMM) is used to determine the membership functions of typical affective subspaces. At every step of modeling the space, the inputs rely completely on the affective experiences recorded by the audiences. The advantages of the improved V-A (Velance-Arousal) emotion model are the per- sonalization, the ability to define typical affective state areas in the V-A emotion space, and the convenience to explicitly express the intensity of each affective state. The experimental results validate the model and show it can be used as a personalized emotion space for video affective content representation.
出处 《Wuhan University Journal of Natural Sciences》 CAS 2009年第5期393-398,共6页 武汉大学学报(自然科学英文版)
基金 Supported by the National Natural Science Foundation of China (60703049) the "Chenguang" Foundation for Young Scientists (200850731353) the National Postdoctoral Foundation of China (20060400847)
关键词 video affective computing personalized emotion space video affective content representation fuzzy C-means clustering (FCM) Gaussian mixture model (GMM) video affective computing personalized emotion space video affective content representation fuzzy C-means clustering (FCM) Gaussian mixture model (GMM)
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参考文献10

  • 1Hanjalic A.Extracting Moods from Pictures and Sounds: Towards Truly Personalized TV[].IEEE Magazine on Sig- nal Processing.2006
  • 2Lang P J,Bradley M M,Cuthbert B N.International Affec- tive Picture System (IAPS): Instruction Manual and Affective Ratings. http://www.unifesp.br/dpsico- bio/adap/instructions.pdf . 2008
  • 3The Internet Movie Database (IMDB). http://www.imdb.com/chart/top . 2008
  • 4Ortony A,Clore G L,Collins A.The cognitive structure of emotions[]..1988
  • 5Russell,J.A.A circumplex model of affect[].Journal of Personality.1980
  • 6Picard R W.Affective Computing[]..1997
  • 7Hanjalic A,Xu L.-Q.Affective video content representation and modeling[].IEEE Transactions on Multimedia.2005
  • 8P. Ekman.Are there basic emotions[].Psychological Review.1992
  • 9Wang H,Cheong L.Affective understanding in fil m[].IEEETransactions on Circuits and Systems for Video Technology.2006
  • 10Cannon RL.Efficient implementation of the fuzzy C-means clustering algorithms[].IEEE Trans on Pattarnanalysis and mzchine intelligence.1986

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