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Learning Pose Estimation for High-Precision Robotic Assembly Using Simulated Depth Images

机译:使用模拟深度图像的高精度机器人装配的学习姿势估计

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Most of industrial robotic assembly tasks today require fixed initial conditions for successful assembly. These constraints induce high production costs and low adaptability to new tasks. In this work we aim towards flexible and adaptable robotic assembly by using 3D CAD models for all parts to be assembled. We focus on a generic assembly task - the Siemens Innovation Challenge - in which a robot needs to assemble a gear-like mechanism with high precision into an operating system. To obtain the millimeter-accuracy required for this task and industrial settings alike, we use a depth camera mounted near the robot's end-effector. We present a high-accuracy two-stage pose estimation procedure based on deep convolutional neural networks, which includes detection, pose estimation, refinement, and handling of near- and full symmetries of parts. The networks are trained on simulated depth images with means to ensure successful transfer to the real robot. We obtain an average pose estimation error of 2.16 millimeters and 0.64 degree leading to 91% success rate for robotic assembly of randomly distributed parts. To the best of our knowledge, this is the first time that the Siemens Innovation Challenge is fully addressed, with all the parts assembled with high success rates.
机译:如今,大多数工业机器人组装任务需要固定的初始条件才能成功组装。这些限制导致高生产成本和对新任务的低适应性。在这项工作中,我们旨在通过对要组装的所有零件使用3D CAD模型来实现灵活,适应性强的机器人组装。我们专注于一般的组装任务-西门子创新挑战赛-机器人需要将高精度的齿轮状机构组装到操作系统中。为了获得此任务和工业设置所需的毫米精度,我们使用了安装在机器人末端执行器附近的深度相机。我们提出了一种基于深度卷积神经网络的高精度两阶段姿态估计程序,该程序包括检测,姿态估计,细化以及对零件的近对称和完全对称的处理。在模拟深度图像上对网络进行训练,以确保将其成功传输到真实机器人。我们获得2.16毫米和0.64度的平均姿态估计误差,导致随机分布零件的机器人组装成功率达到91%。据我们所知,这是第一次全面解决西门子创新挑战赛,所有部件组装成功率很高。

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