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.
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CITATION STYLE
Kim, H., Ohmura, Y., & Kuniyoshi, Y. (2021). Gaze-Based Dual Resolution Deep Imitation Learning for High-Precision Dexterous Robot Manipulation. IEEE Robotics and Automation Letters, 6(2), 1630–1637. https://doi.org/10.1109/LRA.2021.3059619