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How Low Level Observations Can Help to Reveal the User's State in HCI

机译:低级别的观察有助于在HCI中揭示用户的状态

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For next generation human computer interaction (HCI), it is crucial to assess the affective state of a user. However, this respective user state is - even for human annotators - only indirectly inferable using background information and the observation of the interaction's progression as well as the social signals produced by the interlocutors. In this paper, coincidences of directly observable patterns and different user states are examined in order to relate the former to the latter. This evaluation motivates a hierarchical label system, where labels of latent user states are supported by low level observations. The dynamic patterns of occurrences of various social signals may in an integration step infer the latent user's state. Thus, we expect to advance the understanding of the recognition of affective user states as compositions of lower level observations for automatic classifiers in HCI.
机译:对于下一代人机交互(HCI),评估用户的情感状态至关重要。然而,这种相应的用户状态是 - 即使是人类注释器 - 甚至用于人类注释器 - 仅使用背景信息和观察交互的进展以及对话者产生的社交信号的间接可推断。在本文中,检查了直接观察模式和不同用户状态的重合,以便将前者与后者联系起来。该评估激励了一个分层标签系统,其中低级别观测支持潜在用户状态的标签。各种社交信号的发生的动态模式可以在集成步骤推断潜在用户的状态。因此,我们预计将对情感用户状态的识别识别为HCI中自动分类器的较低水平观察的构成。

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