Main Takeaway: Facial expressions Emotions EmotioNet Limitations of emotion recognition Object recognition II Databases for object recognition ... We discuss transformations of r.v.s (change of variables), the LogNormal distribution, and convolutions (sums).

Lecture 22 Cap6412 30938 -

Facial expressions Emotions EmotioNet Limitations of emotion recognition Object recognition II Databases for object recognition ... We discuss transformations of r.v.s (change of variables), the LogNormal distribution, and convolutions (sums).

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  • Facial expressions Emotions EmotioNet Limitations of emotion recognition Object recognition II Databases for object recognition ...
  • We discuss transformations of r.v.s (change of variables), the LogNormal distribution, and convolutions (sums).

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