预测二元口语互动中的中断

Chi-Chun Lee, Shrikanth S. Narayanan
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引用次数: 25

摘要

在自发的谈话中,打断经常发生,而且往往与谈话流程的变化有关。中断预测是自然人机对话界面设计的重要内容。建模可以洞察到人与人之间对话的动态。这项工作利用隐藏条件随机场(HCRF),通过模拟双方说话人在回合改变发生之前的行为,来预测二元语音交互中中断的发生。我们的预测模型使用前景说话者的声音线索和听者的手势线索,在二元交互的多模态数据库上实现了0.54的f测量值,准确率为70.68%,未加权准确率为66.05%。实验结果还表明,听者的行为表明了他/她的打断意图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting interruptions in dyadic spoken interactions
Interruptions occur frequently in spontaneous conversations, and they are often associated with changes in the flow of conversation. Predicting interruption is essential in the design of natural human-machine spoken dialog interface. The modeling can bring insights into the dynamics of human-human conversation. This work utilizes Hidden Condition Random Field (HCRF) to predict occurrences of interruption in dyadic spoken interactions by modeling both speakers' behaviors before a turn change takes place. Our prediction model, using both the foreground speaker's acoustic cues and the listener's gestural cues, achieves an F-measure of 0.54, accuracy of 70.68%, and unweighted accuracy of 66.05% on a multimodal database of dyadic interactions. The experimental results also show that listener's behaviors provides an indication of his/her intention of interruption.
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