Mapping operator motions to a robot is a key problem in teleoperation. Due to differences between workspaces, such as object locations, it is particularly challenging to derive smooth motion mappings that fulfill different goals (e.g. picking objects with different poses on the two sides or passing through key points). Indeed, most state-of-the-art methods rely on mode switches, leading to a discontinuous, low-transparency experience. In this paper, we propose a unified formulation for position, orientation and velocity mappings based on the poses of objects of interest in the operator and robot workspaces. We apply it in the context of bilateral teleoperation. Two possible implementations to achieve the proposed mappings are studied: an iterative approach based on locally-weighted translations and rotations, and a neural network approach. Evaluations are conducted both in simulation and using two torque-controlled Franka Emika Panda robots. Our results show that, despite longer training times, the neural network approach provides faster mapping evaluations and lower interaction forces for the operator, which are crucial for continuous, real-time teleoperation.
翻译:由于物体位置等工作空间之间的差别,获得能够实现不同目标的平稳运动绘图尤其具有挑战性(例如,选择两侧有不同姿势的物体或穿过关键点)。事实上,大多数最先进的方法都依赖模式开关,导致不连续、低透明度的经验。在本文中,我们建议根据操作者和机器人工作空间中感兴趣的物体的构成,统一配置位置、方向和速度制图方法。我们将其应用于双边电信行动。我们研究了实现拟议绘图的两种可能实施方式:一种基于当地加权翻译和旋转的迭接方法,以及一种神经网络方法。评价是在模拟和使用两种托克控制的Franka Enika Panda机器人时进行的。我们的结果显示,尽管培训时间较长,神经网络方法为操作者提供了更快的绘图评估和较低的互动力量,这对于连续实时的远程操作至关重要。