Autonomous Learning Group, Max Planck Institute for Intelligent Systems, Tübingen, Germany.
Sci Robot. 2022 Feb 23;7(63):eabm0608. doi: 10.1126/scirobotics.abm0608.
Tactile feedback is essential to make robots more agile and effective in unstructured environments. However, high-resolution tactile skins are not widely available; this is due to the large size of robust sensing units and because many units typically lead to fragility in wiring and to high costs. One route toward high-resolution and robust tactile skins involves the embedding of a few sensor units (taxels) into a flexible surface material and the use of signal processing to achieve sensing with superresolution accuracy. Here, we propose a theory for geometric superresolution to guide the development of tactile sensors of this kind and link it to machine learning techniques for signal processing. This theory is based on sensor isolines and allows us to compute the possible force sensitivity and accuracy in contact position and force magnitude as a spatial quantity before building a sensor. We evaluate the influence of different factors, such as elastic properties of the material, structure design, and transduction methods, using finite element simulations and by implementing real sensors. We empirically determine sensor isolines and validate the theory in two custom-built sensors with 1D and 2D measurement surfaces that use barometric units. Using machine learning methods to infer contact information, our sensors obtain an average superresolution factor of over 100 and 1200, respectively. Our theory can guide future tactile sensor designs and inform various design choices.
触觉反馈对于使机器人在非结构化环境中更加敏捷和高效至关重要。然而,高分辨率触觉皮肤并不广泛可用;这是由于坚固的感测单元尺寸较大,并且许多单元通常会导致布线脆弱和成本高昂。实现高分辨率和坚固触觉皮肤的一种途径是将少数传感器单元(taxels)嵌入到柔性表面材料中,并使用信号处理来实现超分辨率精度的感测。在这里,我们提出了一种用于几何超分辨率的理论,以指导这种类型的触觉传感器的开发,并将其与用于信号处理的机器学习技术联系起来。该理论基于传感器等照度线,可以在构建传感器之前计算接触位置和力大小的空间位置的可能力灵敏度和精度。我们使用有限元模拟和实施实际传感器来评估不同因素的影响,例如材料的弹性特性、结构设计和换能方法。我们使用机器学习方法来推断接触信息,我们的传感器分别获得了超过 100 和 1200 的平均超分辨率因子。我们的理论可以指导未来的触觉传感器设计,并为各种设计选择提供信息。