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Convolutional Encoder-Decoder Networks for Robust Image-to-Motion Prediction

机译:卷积编码器 - 用于鲁棒图像到运动预测的解码器网络

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A deep encoder-decoder network was previously proposed for learning a mapping from raw images to dynamic movement primitives in order to enable a robot to draw sketches of numeric digits when shown images of same. In this paper, the network architecture, which was previously constructed entirely with fully-connected linear layers, is modified to include convolutional layers in order to improve the image encoder component and make the network more robust to noise. The convolutional layers are pre-trained as part of an MNIST digit classifier and adapted for use in the encoder-decoder network, before the network is trained using a dataset composed of digit images and corresponding writing trajectories. This architecture was tested on several challenging noisy digit datasets and the use of convolutional layers is shown to provide a robust improvement in results.
机译:先前提出了一种深度编码器 - 解码器网络,用于学习从原始图像到动态移动原语的映射,以便在所示的图像示出时使机器人绘制数字数字的草图。在本文中,先前与完全连接的线性层完全构造的网络架构以包括卷积层,以改善图像编码器组件并使网络更稳健地噪声。在使用由数字图像和相应的写入轨迹组成的数据集训练之前,将卷积层预先培训并适用于编码器解码器网络。该架构在几个挑战性嘈杂的数字数据集上进行了测试,并且显示卷积层的使用,以提供稳健的改善。

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