A Hierarchical Separation and Classification Network for Dynamic Microexpression Classification
Jordan Vice,
Masood Mehmood Khan,
Tele Tan
et al.
Abstract:Macrolevel facial muscle variations, as used for building models of seven discrete facial expressions, suffice when distinguishing between macrolevel human affective states but won't discretise continuous and dynamic microlevel variations in facial expressions. We present a hierarchical separation and classification network (HSCN) for discovering dynamic, continuous, and macro-and microlevel variations in facial expressions of affective states. In the HSCN, we first invoke an unsupervised cosine similarity-bas… Show more
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