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Depth-based tracking with physical constraints for robot manipulation

机译:具有物理约束的基于深度的跟踪,用于机器人操纵

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This work integrates visual and physical constraints to perform real-time depth-only tracking of articulated objects, with a focus on tracking a robot's manipulators and manipulation targets in realistic scenarios. As such, we extend DART, an existing visual articulated object tracker, to additionally avoid interpenetration of multiple interacting objects, and to make use of contact information collected via torque sensors or touch sensors. To achieve greater stability, the tracker uses a switching model to detect when an object is stationary relative to the table or relative to the palm and then uses information from multiple frames to converge to an accurate and stable estimate. Deviation from stable states is detected in order to remain robust to failed grasps and dropped objects. The tracker is integrated into a shared autonomy system in which it provides state estimates used by a grasp planner and the controller of two anthropomorphic hands. We demonstrate the advantages and performance of the tracking system in simulation and on a real robot. Qualitative results are also provided for a number of challenging manipulations that are made possible by the speed, accuracy, and stability of the tracking system.
机译:这项工作整合了视觉和物理约束,可以对关节对象进行实时的仅深度跟踪,重点是在现实场景中跟踪机器人的机械手和操纵目标。因此,我们扩展了DART(一种现有的视觉关节对象跟踪器),从而避免了多个交互对象的相互渗透,并利用了通过扭矩传感器或触摸传感器收集的接触信息。为了获得更高的稳定性,跟踪器使用切换模型来检测对象相对于桌子或手掌何时处于静止状态,然后使用来自多个帧的信息收敛到准确而稳定的估计值。检测到与稳定状态的偏差,以保持对失败的抓握和掉落的物体的抵抗力。跟踪器被集成到一个共享的自治系统中,在该系统中,跟踪器提供了由抓握计划器和两只拟人手的控制器使用的状态估计。我们演示了跟踪系统在仿真和实际机器人上的优势和性能。还为跟踪系统的速度,准确性和稳定性使许多具有挑战性的操作提供了定性结果。

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