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Recognition of meeting actions using information obtained from different modalities Natasa Jovanovic TKI University of Twente.

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Presentation on theme: "Recognition of meeting actions using information obtained from different modalities Natasa Jovanovic TKI University of Twente."— Presentation transcript:

1 Recognition of meeting actions using information obtained from different modalities Natasa Jovanovic TKI University of Twente

2 2 Outline  Social psychology aspect of joint activities, joint and individual actions  Meeting as a sequence of meeting actions Semantic approach in modeling meetings  Lexicon of meeting actions  Other aspects of meetings  Semantic model  Conclusions and future directions

3 3 Joint activities (Social psychology aspect)  Activity types: time-bounded event (football game) or an ongoing process (teaching)  Joint activity- an activity with more than one participant. Discourse ( language has dominate role), football game, weeding ceremony, meeting  Dimensions of joint activities: formality, scriptedness, verbalness, cooperativness  Aspects of joint activities: participants, activity roles, public goals, private goals, hierarchies, boundaries, dynamics etc.  Joint activity advance through joint actions

4 4 Individual and joint actions (Social psychology aspect)  Joint action – a group of people doing things in coordination ( e.g speaking and listening,passing a ball in basketball etc.).  Coordination of both content and processes  Individual actions: Autonomous actions Participatory actions (individual acts performed only as the part of a joint action)  A person’s processes may be very different in individual and joint actions even when they appear identical  In joint actions participants often perform different individual actions

5 5 Meeting as a sequence of meeting actions (I)  Meeting is a dynamic process which consists of group interaction ( joint actions) between meeting participants -meeting actions (meeting events)  Meeting actions:monologue, discussion, note taking, presentation, consensus, disagreement etc.  Meeting actions are determined by the participants’ individual actions Beh=f(P,E) P-person; E-environment

6 6 Meeting as a sequence of meeting actions(II)  Multimodal human-human interaction in the meeting (natural humans behavior)  Communication channels: speech, face expressions, gestures, body movements, gaze etc.  Combination of verbal and non-verbal elements

7 7 Semantic approach in modeling meeting (I)  Our idea: Semantic approach in modeling meeting as a sequence of meeting actions using information obtained from different modalities  Why do we need a semantic approach?

8 8 Semantic approach in modeling meeting(II)  Multidimensional (multilevel) problem in meeting modeling. participant level : integration of information obtained from different modalities in order to recognize multimodal participants behavior meeting action level:recognition of meeting actions as a combination of the multimodal participants behavior

9 9 Lexicon of meeting actions(I)  The first step in meeting modeling is to describe a lexicon of meeting actions  Each meeting action has something like a micro grammar  Structure of lexicon: definition of a meeting action characteristics: number of speakers, time, boundaries, topics, speaker behavior, participants behavior, duration constraint etc.

10 10 Lexicon of meeting actions(II)  Set of 17 meeting actions divided in three groups: Single speaker dominate meeting actions Multi speaker meeting actions Non-verbal dominate meeting actions  Hierarchical organization of meeting actions

11 11 Meeting actions Non-verbal dominate Multi-speaker Single speaker dominate PresentationMonologue Opening Introduction White-boardLecturing EndingDiscussion Multi discussion Consensus Disagreement BreakVote Applause Note taking SilenceLaugh Lexicon of meeting actions (III)

12 12 Other aspects of meeting ( User profile )  Meeting is more than a sequence of meeting actions.  User profile: age, gender, native-English speaker, profession, membership to specific group, role, speech style etc.  The user profile can be explicitly specified during the registration process or be learned during the processing of the recorded meetings  Knowledge about user may be useful on individual and group level of meeting modeling.

13 13 Other aspects of meeting ( Background knowledge )  Background knowledge play an important role at each level of abstraction  Background knowledge may include : agenda, written notes, presentation slides, content of white-board number of meeting participants etc.

14 14 Other aspects of meeting ( Target detection )  ”What John said to Peter about the programming standards?“ contains three very important aspects of the meeting.  source of the messages (John)  discussed topic (programming standards)  target (addressee) of the message (Peter)

15 15 Other aspects of meeting ( Target detection )  Target ( addressee) detection needs a multimodal approach (speech,gaze, gesture) “What do you think about my idea?” Gaze detection ( speaker focus of attention) or pointing at the person may help to resolve this target ambiguity  Name detection as a method for target detection  Target of the message can be a particular person, group of participants or all participants

16 16 Other aspects of meetings (Target detection) speakeraddresseeside participant all participants bystander eavesdropper all listener Herbert. H. Clark – Using Language

17 17 Semantic model  Our idea is to develop a modular multimodal system which will use semantic approach on participant level and meeting action level.  Inputs:results of recognition process (WP2) Speech Recognition Gesture/Action Recognition Gaze detection Emotion detection Multimodal person identification and tracking  Output: annotated sequence of meeting actions

18 18 Meeting Actions Recognition Module Semantic model VideoAudio Gaze detection Action/Gesture Recognition Speech Recognition Person /Speaker ID and Tracking Unimodal Interpreters Multimodal Interpreters Sequence of meeting actions Multimodal recognizers Multimodal Fusion Participant Level Modality units Participants multimodal behavior Background Knowledge

19 19 Multimodal fusion on a participant level Gaze Interpreter Action/Gesture Interpreter Speech Interpreter Modality Fusion Additional Inference Multimodal recognizers Gaze detection Action/Gesture Recognition Speech Recognition Person /Speaker ID and Tracking Unimodal Interpreters Multimodal Interpreter Participants multimodal behavior Modality units

20 20 Multimodal fusion on a participant level  Unimodal Interpreters  Unimodal Interpreters modality units 1) Action/Gesture Interpreter participant states (sitting, standing, walking etc.) activities ( silent, talking, laughing,voting etc.) 2) Gaze interpreter ( look at X, look away) 3) Speech Interpreter turn-taking behavior is a basis for social interaction. meaning representation on turn level ( turn array level) features of an array: topic (subtopics), dialog acts (DAMSL), addressees, key words, speech form, overlapping indicator etc.

21 21 Multimodal fusion on a participant level  Multimodal Interpreter  Multimodal Interpreter Multimodal participants behavior 1) Modality fusion (semantic level) Typed feature structure for meaning representation Unification or/and rule-based approach for fusion 2) Additional inference Use additional information from user profile or background knowledge in order to obtain missing data or resolve ambiguity.

22 22 Meeting actions recognition module  Hidden Markov Models states: meeting actions observations: semantic features from participant’s behavior representation  Participant dependent features (state, activity, talking duration, dialogue acts etc.) and common features (previous dialogue act, previous key-words etc.)  IDIAP meeting data corpus

23 23 Conclusions and future direction  The main goal of our approach is to encode more semantic details at each level in other to enable browsing and querying of an archive of recorded meetings.  Larger and more natural meeting data corpus in order to prove our approach for low-level and high-level meeting actions.  Extraction of a set semantic features  Testing approach using techniques different than HMM.


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