2020
DOI: 10.1007/s00530-020-00663-8
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Manifold feature integration for micro-expression recognition

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Cited by 31 publications
(14 citation statements)
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“…The dimensional emotion description model, also known as the continuous emotion description model, describes specific emotion attributes as coordinates in a spatial dimension. Each axis corresponds to a particular attribute of emotion [ 26 ]. Existing theories of specific emotional states can have corresponding coordinates in emotion space, with the values on each axis indicating the intensity of the corresponding attribute.…”
Section: Design Of Classroom Emotion Recognition Model Based On Convo...mentioning
confidence: 99%
“…The dimensional emotion description model, also known as the continuous emotion description model, describes specific emotion attributes as coordinates in a spatial dimension. Each axis corresponds to a particular attribute of emotion [ 26 ]. Existing theories of specific emotional states can have corresponding coordinates in emotion space, with the values on each axis indicating the intensity of the corresponding attribute.…”
Section: Design Of Classroom Emotion Recognition Model Based On Convo...mentioning
confidence: 99%
“…Ranking Loss, such as Contrastive Loss, Margin Loss, Hinge Loss or Triplet Loss, is widely used in MER [70], [160], [136], [55], [161], [162], [71], [163]. The objective of ranking loss is to predict relative distances between inputs, which is also called metric learning [164].…”
Section: Ranking Lossmentioning
confidence: 99%
“…Ranking Loss, such as Contrastive Loss, Margin Loss, Hinge Loss or Triplet Loss, is widely used in MER [82], [173], [153], [60], [174], [175], [83], [176]. The objective of ranking loss is to predict relative distances between inputs, which is also called metric learning [177].…”
Section: Ranking Lossmentioning
confidence: 99%