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Building a System for Emotions Detection from Speech to Control an Affective Avatar

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Figure

Figure 1: The emotion detection game used for recordingJEMO.
Table 3: LIMSI features: low-level descriptors and func-tionals.Abbreviations: root mean square (RMS), MelFrequency Cepstral Coefficients (MFCC), Mean Abso-lute/Square Error (MAE/MSE)
Table 7: Female and Male sub-corpora of the united corpus,# of segments for 38 female and 50 male speakers.
Figure 4: Male speaker means per classes in the space ofMedianEnergy and MedianPitch.Note that several values ofPOS, NEU amd ANG are masked by other classes aroundthe orig.

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