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Incorporating nonverbal features into multimodal models of human-to-human communication.

机译:将非语言功能纳入人与人交流的多模式模型中。

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摘要

Nonverbal communication (e.g., eye gaze and hand gesture) plays an important role in human conversations, including providing semantic content, expressing emotional status, and regulating conversation turns. However, most analyses of conversations largely focus on spoken content and not important nonverbal cues.;In this thesis, we investigated the use of nonverbal cues for enhancing the analysis of conversations. Particularly, we considered three types of conversational structures, speech repairs, sentence units, and floor control shifts, which are important for understanding conversations. To support the research on these three structures, we focused on: (1) collecting multimodal data resources involving nonverbal cues and structural events in human conversations, (2) analyzing the collected data sets to enrich our knowledge about nonverbal cues and the structural events investigated, and (3) building statistical models for detecting structural events using verbal and nonverbal cues. Through collaborations with researchers in psychology and computer vision, we collected the KDI multimodal dialog corpus and the VACE multimodal meeting corpus. Using the KDI data, we analyzed gesture patterns that occur during speech repairs. Using the VACE data, we analyzed gesture patterns for signaling the presence of SUs and gaze and gesture patterns for signaling floor control shifts. Using the VACE data, we then investigated combining gestural features with lexical and prosodic features for detecting SUs and combining gestural and gaze features for detecting floor control shifts.;In this thesis, the impact of nonverbal cues was investigated for analysis and detection of structural events. The development of data resources and tools for this type of research is an important contribution. Our data analyses have enriched the knowledge about the relationship between nonverbal communication and structural events. Our statistical modeling research has demonstrated the usefulness of nonverbal cues for conversation analysis.;Research in this thesis suggests that nonverbal communication provides useful cues for the analysis and detection of structural events in human conversations. Our results support the view that human conversations are processes involving multimodal cues, and so are more effectively analyzed using information from both verbal and nonverbal channels.
机译:非语言交流(例如,视线和手势)在人类对话中起着重要作用,包括提供语义内容,表达情感状态和调节对话转向。但是,大多数对话分析主要集中在口头内容上,而不是重要的非言语提示。;本文研究了非言语提示在对话分析中的应用。特别是,我们考虑了三种类型的会话结构,即语音修复,句子单元和发言控制移位,这对于理解会话很重要。为支持对这三种结构的研究,我们着重于:(1)收集涉及人类对话中非语言线索和结构事件的多模式数据资源,(2)分析收集的数据集以丰富我们对非语言线索和所调查的结构事件的知识,以及(3)建立统计模型以使用言语和非言语线索检测结构事件。通过与心理学和计算机视觉研究人员的合作,我们收集了KDI多模式对话语料库和VACE多模式会议语料库。使用KDI数据,我们分析了语音修复过程中发生的手势模式。使用VACE数据,我们分析了用于表示SU和凝视的手势模式,以及用于表示发言权控制移位的手势模式。利用VACE数据,我们研究了将手势特征与词汇和韵律特征相结合来检测SU,并结合了手势和注视特征来检测底盘控制移位。;本文研究了非语言线索对结构事件的分析和检测的影响。 。为此类研究开发数据资源和工具是一项重要的贡献。我们的数据分析丰富了关于非语言交流与结构性事件之间关系的知识。我们的统计模型研究证明了非语言线索对于会话分析的有用性。本文的研究表明,非语言交流为分析和检测人类会话中的结构事件提供了有用的线索。我们的结果支持这样一种观点,即人类对话是涉及多峰线索的过程,因此可以使用来自口头和非口头渠道的信息进行更有效的分析。

著录项

  • 作者

    Chen, Lei.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 246 p.
  • 总页数 246
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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