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From Facial Features to Facial Expressions A.Raouzaiou, K.Karpouzis and S.Kollias Image, Video and Multimedia Systems Laboratory National Technical University.

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Presentation on theme: "From Facial Features to Facial Expressions A.Raouzaiou, K.Karpouzis and S.Kollias Image, Video and Multimedia Systems Laboratory National Technical University."— Presentation transcript:

1 From Facial Features to Facial Expressions A.Raouzaiou, K.Karpouzis and S.Kollias Image, Video and Multimedia Systems Laboratory National Technical University of Athens

2 Outline  The concept of archetypal expressions  FAPs-based description and estimation of FAPs  Expression synthesis using profiles  Synthesis of intermediate emotions

3 Archetypal Expressions Source: F. Parke and K. Waters, Computer Facial Animation, A K Peters universal Also termed universal because they are recognized across cultures

4 Archetypal Expressions (cont.) Description of the archetypal expressions through muscle actions Translation of facial muscle movements into FAPs Creation of FAPs vocabulary for every archetypal expression Action Units (AUs) - FACS raise_l_i_ eyebrow e.g.AU1=+ raise_r_i_eyebrow e.g. sadness close_t_l_eyelid, close_t_r_eyelid, close_b_l_eyelid, close_b_r_eyelid, raise_l_i_eyebrow, raise_r_i_eyebrow, raise_l_m_eyebrow, raise_r_m_eyebrow, raise_l_o_eyebrow, raise_r_o_eyebrow

5 FAPs-based description Discrete features offer a neat, symbolic representation of expressions Not constrained to a specific face model  Suitable for face cloning applications MPEG-4 compatible  Based on feature points, not complete features

6 FAPs-based description (cont.) Two issues should be addressed :  choice of FAPs involved in profiles’ formation  definition of FAP intensities

7 Expression synthesis Choice of FAPs is based on psychological data Intensities are derived from expression database images

8 Estimation of FAPs Absence of clear quantitative definition of FAPs It is possible to model FAPs through FDP feature points movement using distances s(x,y) e.g. close_t_r_eyelid (F 20 ) - close_b_r_eyelid (F 22 )  D 13 =s (3.2,3.4)  f 13= D 13 - D 13-NEUTRAL

9 Sample FAP vocabulary Sadness: close_t_l_eyelid(F 19 ), close_t_r_eyelid(F 20 ), close_b_l_eyelid (F 21 ), close_b_r_eyelid(F 22 ), raise_l_i_eyebrow(F 31 ), raise_r_i_eyebrow(F 32 ), raise_l_m_eyebrow(F 33 ), raise_r_m_eyebrow(F 34 ), raise_l_o_eyebrow(F 35 ), raise_r_o_eyebrow(F 36 )

10 Archetypal Expression Profiles Profile Profile: set of FAPs accompanied by the corresponding range of variation

11 Sample Profiles of Anger A 1 : F 4 [22, 124], F 31 [-131, -25], F 32 [-136,-34], F 33 [-189,-109], F 34 [- 183,-105], F 35 [-101,-31], F 36 [-108,-32], F 37 [29,85], F 38 [27,89] A 2 : F 19 [-330,-200], F 20 [-335,-205], F 21 [200,330], F 22 [205,335], F 31 [-200,-80], F 32 [-194,-74], F 33 [-190,-70], F 34 =[-190,-70] A 3 : F 19 [-330,-200], F 20 [-335,-205], F 21 [200,330], F 22 [205,335], F 31 [-200,-80], F 32 [-194,-74], F 33 [70,190], F 34 [70,190]

12 Emotion representation Emotions can be approached as points on a plane defined by activation and evaluation

13 Intermediate Expression Profiles  Same universal emotion category Animation of the same FAPs using different intensities Absence of expert knowledge for the (+, –) quadrant worry < fear< terror

14 Intermediate Expression Profiles  Different universal emotion categories In the same evaluation half-plane Averaging of FAPs used in universal emotions

15 Intermediate Expression Profiles  Different universal emotion categories afraid + sad= depressed

16 Conclusions  FAPs provide a compact and established means of emotion representation  Necessary input from psychological and physiological studies  Universal emotions can be used to synthesize intermediate ones Useful for low-bitrate MPEG-4 applications

17 Extensions Verification – Evaluation  Initial results  Acceptable performance for expression grading  Intermediate expressions: better results for the negative evaluation half plane  Lack of linguistic rules for the (+, -) quadrant

18 Extensions Personalized ECAs  Detected facial feature points can be used to adapt a generic ECA head (FDP FPs)  Intermediate emotions based on processing real data (FAP extraction)  Processing real data  temporal aspect of FAPs


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