A high-precision manipulation task, such as needle threading, is challenging. Physiological studies have proposed connecting low-resolution peripheral vision and fast movement to transport the hand into the vicinity of an object, and using high-resolution foveated vision to achieve the accurate homing of the hand to the object. The results of this study demonstrate that a deep imitation learning based method, inspired by the gaze-based dual resolution visuomotor control system in humans, can solve the needle threading task. First, we recorded the gaze movements of a human operator who was teleoperating a robot. Then, we used only a high-resolution image around the gaze to precisely control the thread position when it was close to the target. We used a low-resolution peripheral image to reach the vicinity of the target. The experimental results obtained in this study demonstrate that the proposed method enables precise manipulation tasks using a general-purpose robot manipulator and improves computational efficiency.
翻译:高精度的操纵任务,如针线缝线,具有挑战性。 生理学研究建议将低分辨率外围视力和快速移动连接起来,将手移动到物体附近,并使用高分辨率毛化的视觉实现手向物体的准确定位。 这项研究的结果表明,在基于视觉的双分辨率对单体控制系统的启发下,基于深度模仿学习的方法可以解决针线任务。 首先,我们记录了正在对机器人进行远程操作的人类操作员的视觉动作。 然后,我们只用高分辨率图像在瞄准目标时精确控制线的位置。 我们使用低分辨率边缘图像到达目标附近。 这项研究获得的实验结果表明,拟议的方法能够使用通用机器人操纵器进行精确的操作任务,并提高计算效率。