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Fusion Architectures For Multimodal Cognitive Load Recognition

MULTIMODAL PATTERN RECOGNITION OF SOCIAL SIGNALS IN HUMAN-COMPUTER-INTERACTION, MPRSS 2016(2017)

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摘要
Knowledge about the users emotional state is important to achieve human like, natural Human Computer Interaction (HCI) in modern technical systems. Humans rely on implicit signals like body gestures and posture, vocal changes (e.g. pitch) and mimic expressions when communicating. We investigate the relation between them and human emotion, specifically when completing easy or difficult tasks. Additionally we include physiological data which also differ in changes of cognitive load. We focus on discriminating between mental overload and mental underload, which can e.g. be useful in an e-tutorial system. Mental underload is a new term used to describe the state a person is in when completing a dull or boring task. It will be shown how to select suited features, build uni modal classifiers which then are combined to a multimodal mental load estimation by the use of Markov Fusion Networks (MFN) and Kalman Filter Fusion (KFF).
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关键词
Kalman Filter, Cognitive Load, Fusion Approach, Classifier Decision, Discrete Time Step
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