A GAN-based Approach to Communicative Gesture Generation for Social Robots

Nguyen Tan Viet Tuyen, A. Elibol, N. Chong
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Abstract

People use a wide range of non-verbal behaviors to signal their intentions in interpersonal relationships. Being echoed by the proven benefits and impact of people's social interaction skills, considerable attention has been paid to generating non-verbal cues for social robots. In particular, communicative gestures help social robots emphasize the thoughts in their speech, describing something or conveying their feelings using bodily movements. This paper introduces a generative framework for producing communicative gestures to better enforce the semantic contents that social robots express. The proposed model is inspired by the Conditional Generative Adversarial Network and built upon a convolutional neural network. The experimental results confirmed that a variety of motions could be generated for expressing input contexts. The framework can produce synthetic actions defined in a high number of upper body joints, allowing social robots to clearly express sophisticated contexts. Indeed, the fully implemented model shows better performance than the one without Action Encoder and Decoder. Finally, the generated motions were transformed into the target robot and combined with the robot's speech, with an expectation of gaining broad social acceptance.
基于gan的社交机器人交流手势生成方法
在人际关系中,人们使用各种各样的非语言行为来表达他们的意图。与人类社会互动技能的好处和影响相呼应,人们对社交机器人的非语言线索产生了相当大的关注。特别是,交流手势帮助社交机器人强调他们说话中的想法,用身体动作来描述某事或传达他们的感受。本文介绍了一个生成框架,用于生成交际手势,以更好地执行社交机器人表达的语义内容。该模型受条件生成对抗网络的启发,建立在卷积神经网络的基础上。实验结果证实,可以产生各种运动来表达输入上下文。该框架可以产生由大量上肢关节定义的合成动作,使社交机器人能够清楚地表达复杂的环境。事实上,完全实现的模型比没有动作编码器和解码器的模型表现出更好的性能。最后,将生成的动作转化为目标机器人,并与机器人的语音相结合,期望获得广泛的社会认可。
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