用于形状分类的动觉和触觉信息的数据驱动分析

T. E. D. Oliveira, Vinicius Prado da Fonseca, E. Huluta, P. Rosa, E. Petriu
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引用次数: 6

摘要

人类的触觉是由复杂的传感器和神经系统组成的。该系统推断出的信息使日常的灵巧操作任务成为可能。在生物系统中,在进行触觉探索时,传感器没有有意识的优先级,探索动作的选择是由学习本能和先前动作收集的数据驱动的。人工系统的发展试图用工程传感器和运动选择策略来模仿这样的系统。本文从数据驱动的角度分析了轮廓跟踪中形状识别任务中传感器的选择问题。这项任务包括一个4-DOF机器人手指探索一组7个合成形状。采用主成分分析和多层感知器神经网络对电机、惯性测量单元和磁强计采集的数据进行分析。结果表明,分类率随所考虑的指尖材料和传感器的不同而变化。值得注意的是,磁力计在两种情况下都是最坚固的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven analysis of kinaesthetic and tactile information for shape classification
Humans sense of touch consists in a complexity of sensors and nervous system. The information inferred by this system enables the daily dexterous manipulation tasks. In biological systems, there is no conscious prioritization of sensors while performing tactile exploration and the selection of exploratory movements is driven by learning instincts and data gathered by previous movements. The development of artificial systems tries to mimic such systems with engineered sensors and strategies for movement selection. This paper presents a data-driven analysis to the problem of sensor selection in the contour following for shape discrimination task. This task consists of a 4-DOF robotic finger exploring a set of 7 synthetic shapes. The data collected from the motors, inertial measurement unit, and magnetometer was analyzed applying principal component analysis and a multilayer perceptron neural network. Results show the variation of classification rate depending on the fingertip material and sensor considered. It is worth to observe that the magnetometer was the most robust in both cases.
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