MuDD: A Multimodal Deception Detection Dataset and GSR-Guided Progressive Distillation for Non-Contact Deception Detection explores A multimodal dataset and distillation framework for non-contact deception detection, leveraging physiological cues to improve accuracy.. Commercial viability score: 7/10 in Deception Detection.
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