利用多模态线索自动评估公共演讲技巧

L. Chen, G. Feng, Jilliam Joe, C. W. Leong, Christopher Kitchen, Chong Min Lee
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引用次数: 95

摘要

对公众演讲技巧的传统评估依赖于人工评分。我们报告了一项关于使用多模态技术开发公共演讲表演自动评分模型的初步研究。按照教育评价标准进行任务设计、题型制定和人的评分。使用音频、视频和3D动作捕捉设备收集了17名演讲者的初始语料库,并进行了4个演讲任务。基于演讲内容、演讲方式、手、身、头运动等基本特征的评分模型可以显著预测人类的评分,表明多模态技术在公共演讲技能评估中的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Automated Assessment of Public Speaking Skills Using Multimodal Cues
Traditional assessments of public speaking skills rely on human scoring. We report an initial study on the development of an automated scoring model for public speaking performances using multimodal technologies. Task design, rubric development, and human rating were conducted according to standards in educational assessment. An initial corpus of 17 speakers with 4 speaking tasks was collected using audio, video, and 3D motion capturing devices. A scoring model based on basic features in the speech content, speech delivery, and hand, body, and head movements significantly predicts human rating, suggesting the feasibility of using multimodal technologies in the assessment of public speaking skills.
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