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Towards Robustness to Fluctuated Perceptual Patterns by a Deterministic Predictive Coding Model in a Task of Imitative Synchronization with Human Movement Patterns

机译:在与人类运动模式模仿同步的任务中,通过确定性预测编码模型实现对波动的感知模式的鲁棒性

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The current paper presents how performance of a particular deterministic dynamical neural network model in predictive coding scheme differ when it is trained for a set of prototypical movement patterns using their modulated teaching samples from when it is trained using unmodulated teaching samples. Multiple timescale neural network (MTRNN) trained with or without modulated patterns was applied in a simple numerical experiment for a task of imitative synchronization by inferencing the internal states by the error regression, and the results suggest that the scheme of training with modulated patterns can outperform the scheme of training without them. In our second experiment, our network was tested with naturally fluctuated movement patterns in an imitative interaction between a robot and different human subjects, and the results showed that a network trained with fluctuated patterns could achieve generalization in learning, and mutual imitation by synchronization was obtained.
机译:本论文介绍了使用预测性编码方案训练特定原型运动模式时,使用预测性编码方案训练的特定确定性动态神经网络模型与使用未调制性教学样品进行训练时,其性能如何不同。在一个简单的数值实验中,通过误差回归推断内部状态,将带有或不带有调制模式的多时标神经网络(MTRNN)应用于模拟同步的任务,结果表明,采用调制模式的训练方案可以胜过没有他们的训练计划。在我们的第二个实验中,我们通过模拟机器人和不同人类对象之间的自然波动运动模式对网络进行了测试,结果表明,使用波动模式训练的网络可以实现学习的泛化,并且可以通过同步获得相互模仿。

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