Palermo Francesca, Konstantinova Jelizaveta, Althoefer Kaspar, Poslad Stefan, Farkhatdinov Ildar
School of Electronic Engineering and Computer Science, Queen Mary University of London, London, United Kingdom.
Robotics Research, Ocado Technology, London, United Kingdom.
Front Robot AI. 2020 Dec 2;7:513004. doi: 10.3389/frobt.2020.513004. eCollection 2020.
This paper demonstrates how tactile and proximity sensing can be used to perform automatic mechanical fractures detection (surface cracks). For this purpose, a custom-designed integrated tactile and proximity sensor has been implemented. With the help of fiber optics, the sensor measures the deformation of its body, when interacting with the physical environment, and the distance to the environment's objects. This sensor slides across different surfaces and records data which are then analyzed to detect and classify fractures and other mechanical features. The proposed method implements machine learning techniques (handcrafted features, and state of the art classification algorithms). An average crack detection accuracy of ~94% and width classification accuracy of ~80% is achieved. Kruskal-Wallis results ( < 0.001) indicate statistically significant differences among results obtained when analysing only integrated deformation measurements, only proximity measurements and both deformation and proximity data. A real-time classification method has been implemented for online classification of explored surfaces. In contrast to previous techniques, which mainly rely on visual modality, the proposed approach based on optical fibers might be more suitable for operation in extreme environments (such as nuclear facilities) where radiation may damage electronic components of commonly employed sensing devices, such as standard force sensors based on strain gauges and video cameras.
本文展示了如何利用触觉和接近感应来进行自动机械骨折检测(表面裂缝)。为此,已实现了一种定制设计的集成触觉和接近传感器。借助光纤,该传感器在与物理环境相互作用时测量其主体的变形以及与环境物体的距离。此传感器在不同表面上滑动并记录数据,然后对这些数据进行分析以检测和分类裂缝及其他机械特征。所提出的方法采用了机器学习技术(手工制作的特征和先进的分类算法)。实现了约94%的平均裂缝检测准确率和约80%的宽度分类准确率。Kruskal-Wallis结果(<0.001)表明,在仅分析集成变形测量、仅接近测量以及变形和接近数据两者时所获得的结果之间存在统计学上的显著差异。已实现一种实时分类方法用于对探测表面进行在线分类。与主要依赖视觉模态的先前技术相比,所提出的基于光纤的方法可能更适合在极端环境(如核设施)中运行,在这些环境中辐射可能会损坏常用传感设备(如基于应变片的标准力传感器和摄像机)的电子元件。