In this study, we report the successful execution of in-air knotting of rope using a dual-arm two-finger robot based on deep learning. Owing to its flexibility, the state of the rope was in constant flux during the operation of the robot. This required the robot control system to dynamically correspond to the state of the object at all times. However, a manual description of appropriate robot motions corresponding to all object states is difficult to be prepared in advance. To resolve this issue, we constructed a model that instructed the robot to perform bowknots and overhand knots based on two deep neural networks trained using the data gathered from its sensorimotor, including visual and proximity sensors. The resultant model was verified to be capable of predicting the appropriate robot motions based on the sensory information available online. In addition, we designed certain task motions based on the Ian knot method using the dual-arm two-fingers robot. The designed knotting motions do not require a dedicated workbench or robot hand, thereby enhancing the versatility of the proposed method. Finally, experiments were performed to estimate the knotting performance of the real robot while executing overhand knots and bowknots on rope and its success rate. The experimental results established the effectiveness and high performance of the proposed method.
翻译:在本研究中,我们报告了在深层次学习的基础上使用双臂双指机器人在空中系绳成功实施绳索绳绳索的顺利实施。由于其灵活性,绳索的状况在机器人运行期间处于恒定的通量中。这要求机器人控制系统在任何时候都动态地与物体状态相对应。然而,很难提前编写适合所有物体状态的适当机器人动作的手工描述。为了解决这个问题,我们建立了一个模型,指示机器人使用从其感官机收集的数据,包括视觉和近距离传感器所培训的两根深层神经网来进行弓结和双臂结。最后,进行了实验,以估计实际机器人的结节性能,同时执行已确立的高压和高压率的实验性能和性能率。