This paper presents a novel design of a soft tactile finger with omni-directional adaptation using multi-channel optical fibers for rigid-soft interactive grasping. Machine learning methods are used to train a model for real-time prediction of force, torque, and contact using the tactile data collected. We further integrated such fingers in a reconfigurable gripper design with three fingers so that the finger arrangement can be actively adjusted in real-time based on the tactile data collected during grasping, achieving the process of rigid-soft interactive grasping. Detailed sensor calibration and experimental results are also included to further validate the proposed design for enhanced grasping robustness.
翻译:本文展示了使用多通道光纤进行软软软性触动手指和全线方向适应的新设计,用于硬软互动捕捉; 使用了机器学习方法,用所收集的触动数据来训练实时预测力、扭扭和接触的模型; 我们进一步将这种手指纳入三根手指可重新配置的抓取器设计中,以便根据在捕捉过程中收集的触动数据积极实时调整手指安排,实现硬软交互捕捉过程; 还包括详细的传感器校准和实验结果,以进一步验证增强捕捉力的拟议设计。