论文标题
带有纤维bragg光栅和深度神经网络的Ruffini受体的功能模仿,可以使生物启发的大区块触觉敏感皮肤
Functional mimicry of Ruffini receptors with Fiber Bragg Gratings and Deep Neural Networks enables a bio-inspired large-area tactile sensitive skin
论文作者
论文摘要
预计协作机器人将在日常生活和工作场所(包括工业和医疗机构)与人进行物理互动。相关的关键启用技术是触觉传感,目前需要解决杰出的科学挑战,以同时检测接触位置和强度,以柔软的符合性的人造皮肤适应于大面积的机器人实施方案的复杂弯曲几何形状。在这项工作中,提出了具有弯曲几何形状的大区块敏感的柔软皮肤的发展,从而使机器人通过模块化斑块进行了全体体覆盖。仿生皮肤由软聚合物基质组成,类似于人类前臂,嵌入了光子纤维bragg光栅(FBG)换能器,它们部分模拟了Ruffini机械感受器功能,并具有扩散,重叠的接收场。实施了卷积神经网络深度学习算法和跨部神经元整合过程,以解码FBG传感器输出,以推断通过皮肤表面的接触力量幅度和定位。结果分别达到了35 MN(IQR = 56 MN)和3.2 mm(IQR = 2.3 mm)的中位数误差,分别用于力和定位预测。用拟人臂的示范为基于AI的综合皮肤铺平了道路,从而通过机器智能可以安全的人类机器人合作。
Collaborative robots are expected to physically interact with humans in daily living and workplace, including industrial and healthcare settings. A related key enabling technology is tactile sensing, which currently requires addressing the outstanding scientific challenge to simultaneously detect contact location and intensity by means of soft conformable artificial skins adapting over large areas to the complex curved geometries of robot embodiments. In this work, the development of a large-area sensitive soft skin with a curved geometry is presented, allowing for robot total-body coverage through modular patches. The biomimetic skin consists of a soft polymeric matrix, resembling a human forearm, embedded with photonic Fiber Bragg Grating (FBG) transducers, which partially mimics Ruffini mechanoreceptor functionality with diffuse, overlapping receptive fields. A Convolutional Neural Network deep learning algorithm and a multigrid Neuron Integration Process were implemented to decode the FBG sensor outputs for inferring contact force magnitude and localization through the skin surface. Results achieved 35 mN (IQR = 56 mN) and 3.2 mm (IQR = 2.3 mm) median errors, for force and localization predictions, respectively. Demonstrations with an anthropomorphic arm pave the way towards AI-based integrated skins enabling safe human-robot cooperation via machine intelligence.