首页> 外文会议>IEEE/RSJ International Conference on Intelligent Robots and Systems;IROS 2009 >Emergence of evolutionary interaction with voice and motion between two robots using RNN
【24h】

Emergence of evolutionary interaction with voice and motion between two robots using RNN

机译:使用RNN的两个机器人之间语音和运动的进化交互的出现

获取原文

摘要

We propose a model of evolutionary interaction between two robots where signs used for communication emerge through mutual adaptation. Signs used in human interaction, e.g., language, gestures and eye contact change and evolve in form and meaning through repeated use. To create flexible human-like interaction systems, it is necessary to deal with signs as a dynamic property and to construct a framework in which signs emerge from mutual adaptation by agents. Our target is multi-modal interaction using voice and motion between two robots where a voice/motion pattern is used as a sign referring to a motion/voice pattern. To enable evolutionary signs (voice and motion patterns) to be recognized and generated, we utilized a dynamics model: Multiple Timescale Recurrent Neural Network (MTRNN). To enable the robots to interpret signs, we utilized hierarchical neural networks, which transform dynamics model parameters of voice/motion into those of motion/voice. In our experiment, two robots modified their own interpretation of signs constantly through mutual adaptation in interaction where they responded to the other's voice with motion one after the other. As a result of the experiment, we found that the interaction kept evolving through the robots' repeated and alternate miscommunications and re-adaptations, and this induced the emergence of diverse new signs that depended on the robots' body dynamics through the generalization capability of MTRNN.
机译:我们提出了两个机器人之间的进化相互作用模型,其中用于通信的信号通过相互适应而出现。人类互动中使用的符号(例如语言,手势和目光接触)通过重复使用而在形式和含义上发生变化和演变。为了创建灵活的类似于人的交互系统,有必要将符号视为一种动态属性,并构建一个框架,在该框架中,代理通过相互适应而出现符号。我们的目标是在两个机器人之间使用语音和运动进行多模式交互,其中将语音/运动模式用作表示运动/语音模式的标志。为了能够识别和生成进化符号(语音和运动模式),我们利用了动力学模型:多时标递归神经网络(MTRNN)。为了使机器人能够解释符号,我们利用了层次神经网络,该网络将语音/运动的动力学模型参数转换为运动/语音的动力学模型参数。在我们的实验中,两个机器人通过相互适应,不断地修改自己对符号的解释,在交互过程中,它们彼此动作来响应对方的声音。作为实验的结果,我们发现交互作用随着机器人反复和交替的误解与重新适应而不断发展,并通过MTRNN的泛化能力引发了依赖于机器人身体动力学的各种新体征的出现。 。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号