Distributed sensor arrays capable of detecting multiple spatially distributed stimuli are considered an important element in the realisation of exteroceptive and proprioceptive soft robots. This paper expands upon the previously presented idea of decoupling the measurements of pressure and location of a local indentation from global deformation, using the overall stretch experienced by a soft capacitive e-skin. We employed machine learning methods to decouple and predict these highly coupled deformation stimuli, collecting data from a soft sensor e-skin which was then fed to a machine learning system comprising of linear regressor, gaussian process regressor, SVM and random forest classifier for stretch, force, detection and localisation respectively. We also studied how the localisation and forces are affected when two forces are applied simultaneously. Soft sensor arrays aided by appropriately chosen machine learning techniques can pave the way to e-skins capable of deciphering multi-modal stimuli in soft robots.
翻译:能够探测到空间分布的多刺激的分布式传感器阵列被认为是实现外向感官和自行感知软机器人的一个重要元素。本文扩展了先前提出的将压力测量和局部缩进位置与全球变形脱钩分开的设想,使用了软性电子皮肤所经历的总体伸展。我们使用了机器学习方法来拆分和预测这些高度结合的变形刺激,从一个软感应电子皮肤收集数据,然后将这些数据输入一个机器学习系统,由线性反射器、毛西进程反射器、SVM和随机森林分类器组成,分别用于伸缩、力、探测和本地化。我们还研究了在同时运用两种力量时,本地化和力量会如何受到影响。由适当选择的机器学习技术协助的软感应阵可以为能够解译软性机器人中多模模素的电子皮铺路。</s>