Department of Electrical and Computer Engineering, Media Arts & Technology Program, and Department of Mechanical Engineering, University of California, Santa Barbara, California, 93106, USA.
Department of Electrical and Computer Engineering, Drexel University, Philadelphia, 19104, USA.
Sci Rep. 2018 Sep 12;8(1):13710. doi: 10.1038/s41598-018-31818-3.
Sliding friction between the skin and a touched surface is highly complex, but lies at the heart of our ability to discriminate surface texture through touch. Prior research has elucidated neural mechanisms of tactile texture perception, but our understanding of the nonlinear dynamics of frictional sliding between the finger and textured surfaces, with which the neural signals that encode texture originate, is incomplete. To address this, we compared measurements from human fingertips sliding against textured counter surfaces with predictions of numerical simulations of a model finger that resembled a real finger, with similar geometry, tissue heterogeneity, hyperelasticity, and interfacial adhesion. Modeled and measured forces exhibited similar complex, nonlinear sliding friction dynamics, force fluctuations, and prominent regularities related to the surface geometry. We comparatively analysed measured and simulated forces patterns in matched conditions using linear and nonlinear methods, including recurrence analysis. The model had greatest predictive power for faster sliding and for surface textures with length scales greater than about one millimeter. This could be attributed to the the tendency of sliding at slower speeds, or on finer surfaces, to complexly engage fine features of skin or surface, such as fingerprints or surface asperities. The results elucidate the dynamical forces felt during tactile exploration and highlight the challenges involved in the biological perception of surface texture via touch.
皮肤与被触摸表面之间的滑动摩擦非常复杂,但它是我们通过触摸辨别表面质地的能力的核心。先前的研究已经阐明了触觉纹理感知的神经机制,但我们对指纹与质地表面之间的摩擦滑动的非线性动力学的理解并不完整,而触觉信号正是源于这种滑动。为了解决这个问题,我们将人类指尖在纹理化的对侧表面上滑动时的测量值与模拟模型手指的数值模拟预测值进行了比较,该模型手指与真实手指具有相似的几何形状、组织异质性、超弹性和界面附着力。模型和测量的力表现出相似的复杂、非线性滑动摩擦动力学、力波动以及与表面几何形状相关的显著规律性。我们使用线性和非线性方法(包括递归分析)对匹配条件下的测量和模拟力模式进行了比较分析。对于更快的滑动速度和大于约一毫米的长度尺度的表面纹理,该模型具有最大的预测能力。这可能归因于在较慢的速度或更精细的表面上滑动时,皮肤或表面的精细特征(例如指纹或表面粗糙度)会复杂地参与其中。研究结果阐明了在触觉探索过程中感受到的动态力,并强调了通过触摸感知表面质地所涉及的挑战。