首页> 外文期刊>User modeling and user-adapted interaction >Private emotions versus social interaction: a data-driven approach towards analysing emotion in speech
【24h】

Private emotions versus social interaction: a data-driven approach towards analysing emotion in speech

机译:私人情感与社交互动:分析语音情感的数据驱动方法

获取原文
获取原文并翻译 | 示例

摘要

The 'traditional' first two dimensions in emotion research are VALENCE and AROUSAL. Normally, they are obtained by using elicited, acted data. In this paper, we use realistic, spontaneous speech data from our 'AIBO' corpus (human-robot communication, children interacting with Sony's AIBO robot). The recordings were done in a Wizard-of-Oz scenario: the children believed that AIBO obeys their commands; in fact, AIBO followed a fixed script and often disobeyed. Five labellers annotated each word as belonging to one of eleven emotion-related states; seven of these states which occurred frequently enough are dealt with in this paper. The confusion matrices of these labels were used in a Non-Metrical Multi-dimensional Scaling to display two dimensions; the first we interpret as VALENCE, the second, however, not as AROUSAL but as INTERACTION, i.e., addressing oneself (angry, joyful) or the communication partner (motherese, reprimanding). We show that it depends on the specifity of the scenario and on the subjects' conceptualizations whether this new dimension can be observed, and discuss impacts on the practice of labelling and processing emotional data. Two-dimensional solutions based on acoustic and linguistic features that were used for automatic classification of these emotional states are interpreted along the same lines.
机译:情感研究的“传统”前两个维度是“价”和“情感”。通常,它们是通过使用引出的实际数据获得的。在本文中,我们使用来自“ AIBO”语料库的逼真的,自发的语音数据(人机交互,儿童与Sony的AIBO机器人进行交互)。录音是在“绿野仙踪”场景中完成的:孩子们认为AIBO遵守了他们的命令;实际上,AIBO遵循固定的脚本,并且经常不服从。五个标签标注每个单词属于11个与情感相关的状态之一;本文处理了其中七个状态,这些状态经常发生。这些标签的混淆矩阵用于非度量多维标度中以显示二维;第一个我们解释为效价,第二个则不是解释为AROUSAL,而是互动,即称呼自己(生气,快乐)或沟通伙伴(母语,谴责)。我们表明,这取决于场景的特殊性以及主题的概念化,是否可以观察到这个新维度,并讨论了对标注和处理情感数据的实践的影响。用于这些情绪状态的自动分类的基于声学和语言特征的二维解决方案沿相同的方向进行解释。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号