Trehan Dhruv, Hardman David, Iida Fumiya
Bio-Inspired Robotics Laboratory, University of Cambridge, Cambridge CB2 1PZ, UK.
Sensors (Basel). 2025 Aug 19;25(16):5159. doi: 10.3390/s25165159.
Much as the information generated by our fingertips is used for fine-scale grasping and manipulation, closed-loop dexterous robotic manipulation requires rich tactile information to be generated by artificial fingertip sensors. In particular, fingertip shear sensing dominates modalities such as twisting, dragging, and slipping, but there is limited research exploring soft shear predictions from an increasingly popular single-material tactile technology: electrical impedance tomography (EIT). Here, we focus on the twisting of a screwdriver as a representative shear-based task in which the signals generated by EIT hardware can be analyzed. Since EIT's analytical reconstructions are based upon conductivity distributions, we propose and investigate five reduced-order models which relate shear-based screwdriver twisting to the conductivity maps of a robot's single-material sensorized fingertips. We show how the physical basis of our reduced-order approach means that insights can be deduced from noisy signals during the twisting tasks, with respective torque and diameter correlations of 0.96 and 0.97 to our reduced-order parameters. Additionally, unlike traditional reconstruction techniques, all necessary FEM model signals can be precalculated with our approach, promising a route towards future high-speed closed-loop implementations.
尽管我们指尖产生的信息用于精细抓取和操作,但闭环灵巧机器人操作需要人造指尖传感器生成丰富的触觉信息。特别是,指尖剪切传感在诸如扭转、拖动和滑动等模式中占主导地位,但从日益流行的单材料触觉技术——电阻抗断层扫描(EIT)探索软剪切预测的研究有限。在此,我们将螺丝刀的扭转作为基于剪切的代表性任务,其中可以分析EIT硬件产生的信号。由于EIT的分析重建基于电导率分布,我们提出并研究了五个降阶模型,这些模型将基于剪切的螺丝刀扭转与机器人单材料传感指尖的电导率图相关联。我们展示了降阶方法的物理基础如何意味着可以从扭转任务期间的噪声信号中推断出见解,与我们的降阶参数的扭矩和直径相关性分别为0.96和0.97。此外,与传统重建技术不同,我们的方法可以预先计算所有必要的有限元模型信号,有望为未来的高速闭环实现开辟一条道路。