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Deep Learning of Robotic Manipulator Structures by Convolutional Neural Network

机译:卷积神经网络对机器人操纵器结构的深度学习

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This paper benefits from recent developments in learning of visual features by deep nets and highlights the possibility of learning kinematic features to achieve structure information without vision inputs and only by physical variables measured by sensors such as inertial measurement units (IMUs). It proposes to extract structural kinematic information through long-term monitoring of mechanically connected bodies and variations in the acceleration and angular velocity. This paper shows that training a deep network of linear and nonlinear layers over a variety of serial manipulators provides the ability to realize the kinematic chain for a randomly placed set of sensors. The results present the efficacy of this method for a serial manipulator in the detection of its graph with success rate of 83% in detection of links and joints. An out-of-the-domain test is performed on a heavy duty manipulation setup, which shows acceptable performance change from simulated environment to the real autonomous system demonstrated on a video.
机译:本文受益于通过深网学习视觉特征的最新发展,并强调了学习运动学特征的可能性,无需视觉输入,而仅通过传感器(如惯性测量单位(IMU))测量的物理变量即可获得结构信息。它建议通过对机械连接的物体进行长期监视以及加速度和角速度的变化来提取结构运动学信息。本文表明,在各种串行操纵器上训练线性和非线性层的深层网络,可以为一组随机放置的传感器实现运动链。结果表明,该方法对于串行操纵器的图形检测有效,在检测链接和关节时成功率为83%。在重型操作设置上进行了域外测试,该设置显示了从模拟环境到视频演示的实际自治系统可接受的性能变化。

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