Multimodal Turn Analysis and Prediction for Multi-party Conversations

Meng-Chen Lee, Mai Trinh, Zhigang Deng
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Abstract

This paper presents a computational study to analyze and predict turns (i.e., turn-taking and turn-keeping) in multiparty conversations. Specifically, we use a high-fidelity hybrid data acquisition system to capture a large-scale set of multi-modal natural conversational behaviors of interlocutors in three-party conversations, including gazes, head movements, body movements, speech, etc. Based on the inter-pausal units (IPUs) extracted from the in-house acquired dataset, we propose a transformer-based computational model to predict the turns based on the interlocutor states (speaking/back-channeling/silence) and the gaze targets. Our model can robustly achieve more than 80% accuracy, and the generalizability of our model was extensively validated through cross-group experiments. Also, we introduce a novel computational metric called “relative engagement level" (REL) of IPUs, and further validate its statistical significance between turn-keeping IPUs and turn-taking IPUs, and between different conversational groups. Our experimental results also found that the patterns of the interlocutor states can be used as a more effective cue than their gaze behaviors for predicting turns in multiparty conversations.
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多方对话的多模态转向分析与预测
本文提出了一种分析和预测多方对话中的回合(即回合选择和回合保持)的计算方法。具体而言,我们使用高保真混合数据采集系统来捕获三方对话中对话者的大规模多模态自然会话行为,包括凝视、头部运动、身体运动、语音等。基于从内部采集的数据集中提取的间歇单位(ipu),我们提出了一个基于变压器的计算模型,该模型基于对话者状态(说话/反向通道/沉默)和凝视目标来预测转弯。该模型稳健性达到80%以上的准确率,并通过跨组实验广泛验证了模型的泛化性。此外,我们引入了一种新的计算度量,即ipu的“相对参与水平”(REL),并进一步验证了其在回合保持ipu和回合采取ipu之间以及不同会话组之间的统计显著性。我们的实验结果还发现,在多方对话中,对话者状态的模式可以作为比凝视行为更有效的线索来预测对话的转向。
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