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Classification of Emotions from Video Based Cardiac Pulse Estimation

  • Keya Das
  • Antony Lam
  • Hisato Fukuda
  • Yoshinori Kobayashi
  • Yoshinori Kuno
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 10956)

Abstract

Recognizing emotion from video is an active research theme with many applications such as human-computer interaction and affective computing. The classification of emotions from facial expression is a common approach but it is sometimes difficult to differentiate genuine emotions from faked emotions. In this paper, we use a remote video based cardiac activity sensing technique to obtain physiological data to identify emotional states. We show that from the remotely sensed cardiac pulse patterns alone, emotional states can be differentiated. Specifically, we conducted an experimental study on recognizing the emotions of people watching video clips. We recorded 26 subjects that all watched the same comedy and horror video clips and then we estimated their cardiac pulse signals from the video footage. From the cardiac pulse signal alone, we were able to classify whether the subjects were watching the comedy or horror video clip. We also compare against classifying for the same task using facial action units and discuss how the two modalities compare.

Keywords

Video PPG Cardiac pulse Facial action units Emotion recognition Physiological signal processing 

Notes

Acknowledgments

This work was supported by JSPS KAKENHI Grant Numbers JP17K12709, JP17K18850 and the Tateisi and Technology Foundation.

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Copyright information

© Springer International Publishing AG, part of Springer Nature 2018

Authors and Affiliations

  • Keya Das
    • 1
  • Antony Lam
    • 1
  • Hisato Fukuda
    • 1
  • Yoshinori Kobayashi
    • 1
  • Yoshinori Kuno
    • 1
  1. 1.Graduate School of Science and EngineeringSaitama UniversitySaitamaJapan

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