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Acquisition of Viewpoint Transformation and Action Mappings via Sequence to Sequence Imitative Learning by Deep Neural Networks

机译:深度神经网络通过序列到序列的模仿学习获取视点变换和动作映射

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摘要

We propose an imitative learning model that allows a robot to acquire positional relations between the demonstrator and the robot, and to transform observed actions into robotic actions. Providing robots with imitative capabilities allows us to teach novel actions to them without resorting to trial-and-error approaches. Existing methods for imitative robotic learning require mathematical formulations or conversion modules to translate positional relations between demonstrators and robots. The proposed model uses two neural networks, a convolutional autoencoder (CAE) and a multiple timescale recurrent neural network (MTRNN). The CAE is trained to extract visual features from raw images captured by a camera. The MTRNN is trained to integrate sensory-motor information and to predict next states. We implement this model on a robot and conducted sequence to sequence learning that allows the robot to transform demonstrator actions into robot actions. Through training of the proposed model, representations of actions, manipulated objects, and positional relations are formed in the hierarchical structure of the MTRNN. After training, we confirm capability for generating unlearned imitative patterns.
机译:我们提出了一种模仿学习模型,该模型允许机器人获取演示者与机器人之间的位置关系,并将观察到的动作转换为机器人动作。为机器人提供模仿功能使我们可以向他们传授新颖的动作,而无需采用试错法。用于模仿机器人学习的现有方法需要数学公式或转换模块来转换演示者和机器人之间的位置关系。所提出的模型使用两个神经网络,即卷积自动编码器(CAE)和多时标递归神经网络(MTRNN)。训练CAE可以从相机捕获的原始图像中提取视觉特征。对MTRNN进行了训练,以整合感觉运动信息并预测下一个状态。我们在机器人上实现此模型,并进行了序列到序列的学习,从而使机器人可以将演示者的动作转换为机器人的动作。通过训练提出的模型,在MTRNN的层次结构中形成了动作,操作对象和位置关系的表示。训练后,我们确认了生成未学习的模仿模式的能力。

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