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Latent Character Model for Engagement Recognition Based on Multimodal Behaviors

机译:基于多模式行为的参与识别潜在字符模型

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Engagement represents how much a user is interested in and willing to continue the current dialogue and is the important cue for spoken dialogue systems to adapt the user state. We address engagement recognition based on listener's multimodal behaviors such as backchannels, laughing, head nodding, and eye gaze. When the ground-truth labels are given by multiple annotators, they differ according to each annotator due to the different perspectives on the multimodal behaviors. We assume that each annotator has a latent character that affects its perception of engagement. We propose a hierarchical Bayesian model that estimates both the engagement level and the character of each annotator as latent variables. Furthermore, we incorporate other latent variables to map the input feature into a sub-space. The experimental result shows that the proposed model achieves higher accuracy than other models that do not take into account the character.
机译:订婚代表了用户感兴趣的程度,并愿意继续进行当前对话,并且是对话系统来调整用户状态的重要提示。我们根据倾听者,笑,头点头和眼睛凝视地解决了基于倾听的多模式行为的参与认可。当地面真理标签由多个注释器给出时,由于多式联行为的视角不同,它们根据每个注释器而不同。我们假设每个注释者都有一个潜在的角色,影响其对参与的感知。我们提出了一个分层贝叶斯模型,估计接合水平和每个注释器的字符作为潜在变量。此外,我们将其他潜在的变量纳入将输入功能映射到子空间中。实验结果表明,所提出的模型比其他不考虑角色的模型实现更高的准确性。

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