1 / 17

Emotional Speech detection Laurence Devillers, LIMSI-CNRS, devil@limsi.fr

Emotional Speech. Emotional Speech detection Laurence Devillers, LIMSI-CNRS, devil@limsi.fr Expression of emotions in Speech synthesis Marc Schröder, DFKI, schroed@dfki.de Humaine Plenary Meeting, 4-6 June 2007, Paris. Overview. Challenge:

dale
Télécharger la présentation

Emotional Speech detection Laurence Devillers, LIMSI-CNRS, devil@limsi.fr

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Emotional Speech Emotional Speech detection Laurence Devillers, LIMSI-CNRS, devil@limsi.fr Expression of emotions in Speech synthesis Marc Schröder, DFKI, schroed@dfki.de Humaine Plenary Meeting, 4-6 June 2007, Paris L-Devillers - Plenary 5 juin 2007

  2. Overview Challenge: Real-time system for “real-life” emotional speech detection in order to build an affectively competent agent Emotion is considered in the broad sense Real-life emotions are often shaded, blended, masked emotions due to social aspects L-Devillers - Plenary 5 juin 2007

  3. Static emotion detection system (emotional unit level: word, chunk, sentence) • Statistical approach (such as SVM) using large amount of data to train models • 4-6 emotions detected, rarely more State-of-the-art E models 0: 0bservation Emotion detection P(Ei /O) Extraction features The scheme shows the components of an automatic emotion recognition systemThe performances on realistic data (CEICES): 2 emotions > 80% 4 emotions >60% L-Devillers - Plenary 5 juin 2007

  4. Automatic emotion detection • The difficulty of the detection task increases with the variability of the emotional speech expression. • 4 dimensions: • Speaker (dependent/independent, age, gender, health), • Environment (transmission channel, noise environment), • Number and type of emotions (primary, secondary) • Acted/real-life data and applications context L-Devillers - Plenary 5 juin 2007

  5. Automatic emotion detection: Research evolution 2007 1996 2003 fictions documentaires journaux TV clips actors Primary acted-emotions Emotion/Unemotion (WoZ) Positive/Negative emotions HMI Speaker-dependent Pluri-speaker Phone Voice Superposition Public place Channel-independent Emotion representation Emotion in interaction . >5 Real emotions . • >4 acted • -emotions • 2- 5 realistic emotions • (children, CEICES), HMI • Real-life call-center emotions HMI . Call center data. WoZ . Acted/Woz/ real-life data Quiet room Speakers Channel-dependent withadaptation • Speaker-independent: • Adaptation to gender Personality, Health, Age, Culture Environment Transmission L-Devillers - Plenary 5 juin 2007

  6. Challenge with spontaneous emotions • Authenticity is present but there is no control on the emotion • Need to find appropriate labels and measures for annotation validation • Blended emotions (Scherer: Geneva Airport  Lost Luggage Study) • Annotation and Validation of annotation • Expert annotation phase by several coders (10 coders, CEICES (5 coders), often only two) • Control of the quality of annotations: • Intra/Inter annotations agreement • Perception tests • Validate the annotation scheme and the annotations Perception of emotion mixtures (40 subjects) NEG/POS valence Importance of the context • Give measure for comparing human perception with automatic detection. L-Devillers - Plenary 5 juin 2007

  7. Human-Human Real-life Corpora Audio Audio Visuel L-Devillers - Plenary 5 juin 2007

  8. Context-dependent emotion labels Do the labels represent the emotion of a considered task or context? Example: Real-life emotion studies (call center): The Fear label represents different expressions of Fear due to different contexts: Fear for callers of losing money, Fear for callers for life, Fear for agents of mistaking The difference is not just a question of intensity/activation -> Primary/Secondary fear ? -> Degree of Urgency/reality of the threat ? Fear in the fiction (movies): study of many different contexts How to generalize ? Should we define labels in function of the type of context? We just defined the social role (agent/caller) as a context See Poster of C. Clavel L-Devillers - Plenary 5 juin 2007

  9. Emotional labels • The majority of the detection systems uses emotion discrete representation • Need a sufficient amount of data. In that objective, we use hierarchical organization of labels (LIMSI example) L-Devillers - Plenary 5 juin 2007

  10. No bad coders but different perceptionsCombining annotations of different coders: a Soft vector of emotions Labeler 1: (Major) Annoyance, (Minor) Interest Labeler 2: (Major) Stress, (Minor) Annoyance  (wM/W Annoyance, wm/W Stress, wm/W Interest) For wM=2 , wm=1 ,W=6  (0.5 Annoyance, 0.33 Stress, 0.17 Interest). L-Devillers - Plenary 5 juin 2007

  11. ~200 cues • Prosodic • - F0 • - Formants • - Energy • Micro- • prosody • Jitter • Shimmer… • Disfluences • Affect bursts Praat WEKA: - attribute Selection - SVM, .. transcription combination • Lu mots • Preprocessing • Stemming N-grams model Speech data processing LIMSI – see Poster L. Vidrascu • Standard features • Pich level, range, • Energy level, range • Speaking rate • Spectral features (formants, Mfccs) • Less standard • Voice quality: local disturbances (jitter/shimmer) • Disfluences (pauses, filler pauses) • Affect bursts • We need to automatically detect affect bursts and to add new features such as voice quality features • Phone signal is not of sufficient quality for many existing techniques • WEKA toolkit:(www.cs.waikato.ac.nz - Witten & Franck, 1999) L-Devillers - Plenary 5 juin 2007 see Ni Chasaide poster

  12. LIMSI: Results with paralinguistic cues (SVMs): from 2 to 5 emotion classes (% of good detection) L-Devillers - Plenary 5 juin 2007 Fe:fear, Sd:sadness; Ag:anger; Ax anxi, St:stress, Re relief

  13. 25 best features for 5 emotions detection Anger, Fear, Sadness, Relief Neutral state Features from all the classes were selected (different from one class to another) The difference of the media channel (phone/microphone), the type of data (adult vs. children, realistic vs. naturalistic) and the emotion classes have an impact on the best relevant set of features. Out of our 5 classes, Sadness is the least recognized without mixing the cues. L-Devillers - Plenary 5 juin 2007

  14. Real-life emotional system System based on acted data -> inadequate for real-life data detection (Batliner) GEMEP/CEMO comparison: different emotions First experiments show only an acceptable detection score for Anger. Real-life emotion studies are necessary Detection results on call center data: state of the art for « realistic emotions » > 80% 2 emotions, > 60% 4 emotions, ~55% 5 emotions L-Devillers - Plenary 5 juin 2007

  15. Challenges ahead Short-term: • Acceptable solutions for targeted applications are in reach • Use dynamic model of emotion for real-time emotion detection (history memory) • New features: Automatically extracted information on voice quality, affect bursts and disfluences from the signal that does not require exact speech recognition. • Detect relaxed/tensed voice (Scherer) • Add contextual knowledge to the blind statistical model: social role, type of action, regulation (adapt emotional expression to strategic interaction goals (faces theory, Goffman)). Long-term • Emotion dynamic processus based on appraisal model. • Combining informations at several levels: acoustic/linguistic, multimodal cues, adding contextual informations (social role) L-Devillers - Plenary 5 juin 2007

  16. Demo (coffee break…) L-Devillers - Plenary 5 juin 2007

  17. Thanks L-Devillers - Plenary 5 juin 2007

More Related