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首页> 外文期刊>ACM transactions on accessible computing >A~3: HCI Coding Guideline for Research Using Video Annotation to Assess Behavior of Nonverbal Subjects with Computer-Based Intervention
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A~3: HCI Coding Guideline for Research Using Video Annotation to Assess Behavior of Nonverbal Subjects with Computer-Based Intervention

机译:A〜3:HCI编码指南,使用视频注释通过计算机干预评估非语言主体的行为

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摘要

HCI studies assessing nonverbal individuals (especially those who do not communicate through traditional linguistic means: spoken, written, or sign) are a daunting undertaking. Without the use of directed tasks, interviews, questionnaires, or question-answer sessions, researchers must rely fully upon observation, of behavior, and the categorization and quantification of the participant's actions. This problem is compounded further by the lack of metrics to quantify the behavior of nonverbal subjects in computer-based intervention contexts. We present a set of dependent variables called A3 (pronounced A-Cubed) or Annotation for ASD Analysis, to assess the behavior of this demographic of users, specifically focusing on engagement and vocalization. This paper demonstrates how theory from multiple disciplines can be brought together to create a set of dependent variables, as well as demonstration of these variables, in an experimental context. Through an examination of the existing literature, and a detailed analysis of the current state of computer vision and speech detection, we present how computer automation may be integrated with the A3 guidelines to reduce coding time and potentially increase accuracy. We conclude by presenting how and where these variables can be used in multiple research areas and with varied target populations.
机译:HCI研究评估非语言个体(尤其是那些不通过传统语言手段进行交流的人:口语,书面或手语)是一项艰巨的任务。在不使用定向任务,访谈,问卷或问题解答会话的情况下,研究人员必须完全依赖于观察,行为观察以及参与者行为的分类和量化。由于缺乏量化基于计算机的干预情境中非语言对象行为的度量标准,这个问题进一步加剧了。我们介绍了一组称为A3(发音为A-Cubed)或ASD分析注释的因变量,以评估此用户群的行为,特别是专注于参与和发声。本文演示了如何将来自多个学科的理论整合在一起,以创建一组因变量,并在实验环境中演示这些变量。通过检查现有文献,并对计算机视觉和语音检测的当前状态进行详细分析,我们介绍了如何将计算机自动化与A3准则集成在一起以减少编码时间并可能提高准确性。最后,我们介绍了如何在多个研究领域以及不同的目标人群中使用这些变量。

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