Costi Leone, Maiolino Perla, Iida Fumiya
Bio-Inspired Robotics Laboratory, Department of Engineering, University of Cambridge, Cambridge, United Kingdom.
Oxford Robotics Institute, University of Oxford, Oxford, United Kingdom.
Front Robot AI. 2022 Jul 11;9:930405. doi: 10.3389/frobt.2022.930405. eCollection 2022.
The mechanical properties of a sensor strongly affect its tactile sensing capabilities. By exploiting tactile filters, mechanical structures between the sensing unit and the environment, it is possible to tune the interaction dynamics with the surrounding environment. But how can we design a good tactile filter? Previously, the role of filters' geometry and stiffness on the quality of the tactile data has been the subject of several studies, both implementing static filters and adaptable filters. State-of-the-art works on online adaptive stiffness highlight a crucial role of the filters' mechanical behavior in the structure of the recorded tactile data. However, the relationship between the filter's and the environment's characteristics is still largely unknown. We want to show the effect of the environment's mechanical properties on the structure of the acquired tactile data and the performance of a classification task while testing a wide range of static tactile filters. Moreover, we fabricated the filters using four materials commonly exploited in soft robotics, to merge the gap between tactile sensing and robotic applications. We collected data from the interaction with a standard set of twelve objects of different materials, shapes, and textures, and we analyzed the effect of the filter's material on the structure of such data and the performance of nine common machine learning classifiers, both considering the overall test set and the three individual subsets made by all objects of the same material. We showed that depending on the material of the test objects, there is a drastic change in the performance of the four tested filters, and that the filter that matches the mechanical properties of the environment always outperforms the others.
传感器的机械性能会强烈影响其触觉传感能力。通过利用触觉滤波器,即传感单元与环境之间的机械结构,可以调整与周围环境的相互作用动态。但是,我们如何设计一个好的触觉滤波器呢?此前,滤波器的几何形状和刚度对触觉数据质量的作用一直是多项研究的主题,这些研究既有对静态滤波器的实现,也有对自适应滤波器的实现。关于在线自适应刚度的前沿研究突出了滤波器机械行为在记录的触觉数据结构中的关键作用。然而,滤波器与环境特性之间的关系在很大程度上仍然未知。我们希望在测试多种静态触觉滤波器时,展示环境机械性能对采集到的触觉数据结构和分类任务性能的影响。此外,我们使用软机器人中常用的四种材料制作了滤波器,以弥合触觉传感与机器人应用之间的差距。我们从与一组由不同材料、形状和纹理的十二个标准物体的相互作用中收集了数据,并分析了滤波器材料对这些数据结构以及九个常见机器学习分类器性能的影响,同时考虑了整个测试集以及由相同材料的所有物体组成的三个单独子集。我们表明,根据测试物体的材料不同,四种测试滤波器的性能会发生剧烈变化,并且与环境机械性能相匹配的滤波器总是比其他滤波器表现更优。