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Fusion Architectures for Multimodal Cognitive Load Recognition

机译:用于多模式认知负载识别的融合架构

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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).
机译:有关用户情感状态的知识对于在现代技术系统中实现类似于人的自然人机交互(HCI)至关重要。人类在交流时依赖于诸如身体手势和姿势,声音变化(例如音调)和模仿表情之类的隐含信号。我们研究它们与人类情感之间的关系,特别是在完成简单或困难的任务时。此外,我们还包括生理数据,这些数据在认知负荷的变化方面也有所不同。我们专注于区分精神超负荷和精神欠负荷,例如在电子教学系统中很有用。精神负荷不足是一个新术语,用于描述一个人在完成沉闷或无聊的任务时所处的状态。将展示如何选择合适的特征,构建单模态分类器,然后通过使用马尔可夫融合网络(MFN)和卡尔曼滤波融合(KFF)将其组合到多模态心理负荷估计中。

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