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An Emotion Recognition Journey

An Emotion Recognition Journey. Lucy Kuncheva. A long time ago in a galaxy far, far away. I’d better move to Cardiff. around the summer of 2008,. we came in contact with the School of Psychology at Bangor University. I’d better move to Brunel.

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An Emotion Recognition Journey

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  1. An Emotion Recognition Journey Lucy Kuncheva

  2. A long time ago in a galaxy far, far away...

  3. I’d better move to Cardiff... around the summer of 2008, we came in contact with the School of Psychology at Bangor University. I’d better move to Brunel...

  4. Areas of activation in the brain in response to emotion stimuli. Amygdala

  5. Areas of activation in the brain in response to emotion stimuli. The limbic system

  6. fMRI data were acquired from 16 right-handed healthy US college male students (aged 20–25).

  7. The Dead Salmon Lesson

  8. How far are we from MIND READNING? this far...

  9. March 2009 EPSRC proposal New approaches for fMRI data analysis

  10. April 2010 FP7 proposal Lost an entire month of my life to this....

  11. Kuncheva L.I., J. J. Rodriguez, C. O. Plumpton, D. E. J. Linden and S. J. Johnston, Random Subspace Ensembles for fMRI Classification, IEEE Transactions on Medical Imaging, 29 (2), 2010, 531-542. KunchevaL.I., J. J. Rodriguez, Classifier Ensembles for fMRI Data Analysis: An Experiment, Magnetic Resonance Imaging, 28 (4), 2010, 583-593. KunchevaL.I. and C. O. Plumpton, Choosing parameters for Random Subspace ensembles for fMRI classification, Proc. Multiple Classifier Systems (MCS'10), Cairo, Egypt, LNCS 5997, 2010, 54-63. Plumpton C. O., L. I. Kuncheva, N. N. Oosterhof and S. J. Johnston, Naive random subspace ensemble with linear classifiers for real-time classification of fMRI data, Pattern Recognition, 45 (6), 2012, 2101-2108. Plumpton C. O., L. I. Kuncheva, D. E. J. Linden and S. J. Johnston, On-line fMRI Data Classification Using Linear and Ensemble Classifiers, Proc. ICPR 2010, Istanbul, Turkey, 2010, 4312-4315. 70 41 9 7 5

  12. Joe Freeman 10/11 3rd year project fMRI Visualiser Joey Owen 10/11 3rd year project fMRI Voxel selection Cat Plumpton Jamie Blacker 09/10 3rd year project Fractals and fMRI PhD real-time fMRI data analysis Adam Williams 09/10 3rd year project Emotion recognition from fMRI data Colin Steele 08/09 3rd year project fMRI Data analysis Tom Gardner 10/11 3rd year project Environments for emotion recognition

  13. 2010 End of the fMRI era... Genre in crisis

  14. Brain-computer interface through EEG Summer 2010 Peripheral devices Game accessories EEG headsets Inexpensive Accessible Enter Tom Christy!

  15. Summer 2010 And just like that... The idea was born... A game controlled by emotion

  16. Summer 2010 Sa’ad Martin

  17. Autumn 2010 Not as easy as it looked...

  18. AFFECTIVE COMPUTING TACcelebrates its 5th Anniversary The Galvactivator: A glove that senses and communicates skin conductivity

  19. “Affective Computing is an area of computing that relates to, arises from, or influences emotions.” Rosalind Picard, 1995 Valence POSITIVE happy content LAHV HAHV excited calm Arousal PASSIVE ACTIVE angry depressed LALV HALV fearful sad NEGATIVE

  20. EXPRESSION OF EMOTION - MODALITIES physiological behavioural facial expression central nervous system eye tracking interaction with the computer EEG gesture peripheral nervous system fMRI speech fNIRS posture pulse rate EMG pressure on mouse pulse variation respiration skin to drag-click speed Galvanic skin response blood pressure dialogue with tutor

  21. facial expression EEG eye tracking fNIRS posture fMRI gesture EMG speech pulse rate pulse variation respiration blood pressure pressure on mouse Galvanic skin response drag-click-zoom-type speed dialogue with tutor skin to

  22. Detecting Stress During Real-World Driving Tasks Using Physiological Sensors Jennifer A. Healey and Rosalind W. Picard IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, VOL. 6, NO. 2, JUNE 2005 • The subject wore five physiological sensors: • an electrocardiogram (EKG) on the chest • an electromyogram (EMG) on the left shoulder • a chest cavity expansion respiration sensor (Resp.) around the diaphragm, • skin conductivity sensor on the left hand • skin conductivity sensor on the left foot

  23. AMBER Experiment #1 NeuroSky EEG Galvanic skin response (+) Positive emotion Whale and ocean sounds... Pulse signal Tom • (-) Negative emotion • Michael Jackson • Cheeky girls

  24. Individual classifiers Ensembles

  25. A.M.B.E.R. Advanced Multimodal Biometric Emotion Recognition NeuroSky EDA Pulse reader My lovely plant Cast: Tom’s R2D2 (show off!) EMOTIV Nia Serious wired-up man Tom Christy Very important supervisor Lucy Kuncheva

  26. A.M.B.E.R. Advanced Multimodal Biometric Emotion Recognition Media stars overnight!

  27. DATA & Collaborators HARDWARE Tom Lucy

  28. 2013 2012 2011 HARDWARE Tom

  29. 2013 pulse reader “emotional mouse” Version 1 Reincarnation Version 2 EDA sensors (Galvanic skin response)

  30. This is what Google returned 2nd on “Guillaume Thierry”!   In the meantime: Guillaume Thierry Me: Would you like to collaborate on emotion recognition from EEG data? Guillaume: Yes, of course, but listen what a fantastic idea occurred to me just now!!!” Christoph Klein

  31. March 2011 EPSRC proposal Stephan Boehm Let’s give it a go

  32. No One is a Prophet in their Own Land

  33. Seminar May 2012 On-going collaboration with the University of Salzburg Hello Salzburg!

  34. Hello Ramon Mollineda! Hello Juan Rodriguez!

  35. Video: Arch Enemy (My Apocalypse) Volunteers Participants All

  36. What emotion is being provoked?!?

  37. Provoked? Acted? Spontaneous? Self-reported?

  38. So, WHAT are we RECOGNISING? Emotions are very difficult to define and explicate. Experiments for provoking emotion vary considerably, and so do the results reported in the literature ( from near chance to 95% accuracy). Most emotion measuring modalities are intrusive and annoying. Emotions are individual for each person. The measured signals are difficult to analyse. There is a bottleneck of idiosyncratic feature extraction and parameter tuning. There is no unified protocol. Benchmark data collections are not available. There is no consensus about the type of experiment to validate a hypothesis (provoked, controlled, acted, spontaneous emotion).

  39. Maybe not... We can detect CHANGE in the physiological responses and the EEG, which may be associated with some emotion. If we need to ACT upon detecting an emotion rather than NAMING it, we still may have a chance. Are we doomed?

  40. Tom Lucy Simple, transparent and generic technologies for feature extraction. The emotional mouse State-of-the-art data analysis Other ingenious input devices User-friendly EEG headsets Unified protocols,benchmark data

  41. Tom Lucy THE END Simple, transparent and generic technologies for feature extraction. The emotional mouse State-of-the-art data analysis Other ingenious input devices User-friendly EEG headsets Unified protocols,benchmark data

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