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Generative Multimodal Models of Nonverbal Synchrony in Close Relationships

机译:亲密关系中非语言同步的生成多模态模型

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Positive interpersonal relationships require shared understanding along with a sense of rapport. A key facet of rapport is mirroring and convergence of facial expression and body language, known as nonverbal synchrony. We examined nonverbal synchrony in a study of 29 heterosexual romantic couples, in which audio, video, and bracelet accelerometer were recorded during three conversations. We extracted facial expression, body movement, and acoustic-prosodic features to train neural network models that predicted the nonverbal behaviors of one partner from those of the other. Recurrent models (LSTMs) outperformed feed-forward neural networks and other chance baselines. The models learned behaviors encompassing facial responses, speech-related facial movements, and head movement. However, they did not capture fleeting or periodic behaviors, such as nodding, head turning, and hand gestures. Notably, a preliminary analysis of clinical measures showed greater association with our model outputs than correlation of raw signals. We discuss potential uses of these generative models as a research tool to complement current analytical methods along with real-world applications (e.g., as a tool in therapy).
机译:积极的人际关系需要共同的理解以及融洽的感觉。融洽的一个关键方面是面部表情和肢体语言的镜像和融合,这被称为非语言同步。在对29对异性恋浪漫情侣的研究中,我们检查了非语言同步性,其中在三个对话中记录了音频,视频和手镯加速度计。我们提取了面部表情,身体动作和声音韵律特征,以训练神经网络模型,该模型可以预测一个伴侣的非语言行为与另一伴侣的非语言行为。递归模型(LSTM)优于前馈神经网络和其他机会基准。该模型学习了包括面部反应,与语音相关的面部动作和头部动作在内的行为。但是,它们没有捕捉到短暂的或周期性的行为,例如点头,转头和手势。值得注意的是,对临床措施的初步分析表明,与原始信号的相关性相比,与我们的模型输出的关联性更高。我们讨论了这些生成模型作为研究工具的潜在用途,以补充当前的分析方法以及实际应用(例如,作为治疗工具)。

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