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Control Methods Based on Neural Network Forward and Inverse Models for a Biomechanical Structured Vocal Cord Model on an Anthropomorphic Talking Robot

机译:基于神经网络前向和逆模型对拟人谈话机器人的生物力学结构化声线模型的控制方法

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We have developed a vocal control method, based on forward and inverse models, to allow the anthropomorphic talking robot Waseda Talker No. 7 (WT-7) to produce various kinds of voices. The control parameters of the vocal cords on WT-7 are pressure, vocal cord tension and glottal opening, and the acoustic parameters are sound pressure, sound pitch and spectrum slope. The relationships among these parameters are complicated and difficult to model using conventional methods. Here we present a neural network (NN) control method. The learning process consists of creation of the NN forward model by back propagation methods and optimization of the inverse model using the forward model. In addition, a real-time auditory feed-back mechanism is used to reduce the error between the target and the generated acoustic parameters. Using this method, the control parameters can be adjusted to follow the target voice well.
机译:我们开发了一种基于前向和逆模型的声带控制方法,以允许人为谈话机器人WASEDA TABLER No.7(WT-7)产生各种声音。 WT-7上的声带的控制参数是压力,声带张力和光泽的开口,声学参数是声压,声音间距和光谱斜率。使用传统方法,这些参数之间的关系复杂且难以模拟。在这里,我们提出了一种神经网络(NN)控制方法。学习过程由使用前向模型的反向传播方法创建NN前向模型和优化逆模型。此外,使用实时听觉反馈机制来减少目标与所产生的声学参数之间的误差。使用此方法,可以调整控制参数以遵循目标语音。

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