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Toward RNN Based Micro Non-verbal Behavior Generation for Virtual Listener Agents

机译:对虚拟侦听器代理的基于RNN的微型非言语行为生成

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This work aims to develop a model to generate fine grained and reactive non-verbal idling behaviors of a virtual listener agent when a human user is talking to it. The target micro behaviors are facial expressions, head movements, and postures. The following two research questions then emerge. Whether these behaviors can be trained from the corresponding ones from the user's behaviors? If the answer is true, what kind of learning model can get high precision? We explored the use of two recurrent neural network (RNN) models (Gated Recurrent Unit, GRU and Long Short-term Memory, LSTM) to learn these behaviors from a human-human data corpus of active listening conversation. The data corpus contains 16 elderly-speaker/young-listener sessions and was collected by ourselves. The results show that this task can be achieved to some degree even with the baseline multi-layer perceptron models. Also, GRU showed best performance among the three compared structures.
机译:这项工作旨在开发一个模型,以在人类用户与之交谈时生成虚拟侦听器代理的细粒度和无功的非言语怠速行为。目标微观行为是面部表情,头部运动和姿势。然后出现了以下两项研究问题。这些行为是否可以从用户的行为中从相应的行为培训?如果答案是真的,那么什么样的学习模型可以获得高精度?我们探讨了使用两个经常性神经网络(RNN)模型(门控经常性单元,GRU和长期短期记忆,LSTM)来从人类的主动听力谈话中学习这些行为。数据语料库包含16名老妇人/年轻倾听者会议,并被自己收集。结果表明,即使使用基线多层的Perceptron模型也可以在某种程度上实现这项任务。此外,GRU在三个比较结构中显示出最佳性能。

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