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Tactile discrimination of fabrics using machine learning techniques

机译:使用机器学习技术的织物触觉识别

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摘要

Data mining and machine learning methods are proposed in order to discriminate between various fabrics. In particular textile classes are distinguished, like awning, jeans, jute, pile and satin. The real signals are acquired by a laboratory setup that includes: a Cartesian robot with ability to apply controlled constant pressure and speed, a MEMS piezo capacitive sensor and a Simulink module for signal recording. A set of static and dynamic features is extracted from the data series. A novel approach to feature selection is designed, based on an iterative p-value filter, with separate runs (and results) for different pairs of classes. A set of one-to-one class classifiers (a support vector machine) is learned in corresponding feature spaces. The evaluation procedure, in terms of a ten-fold cross validation, confirmed a 100% of classification accuracy of the proposed approach on available sensor data.
机译:为了区分各种结构,提出了数据挖掘和机器学习方法。尤其要区分纺织类,例如遮阳篷,牛仔裤,黄麻,绒头和缎子。实际信号是通过实验室设置获得的,实验室设置包括:能够施加恒定压力和速度的直角坐标机器人,MEMS压电电容式传感器以及用于信号记录的Simulink模块。从数据系列中提取了一组静态和动态特征。基于迭代p值过滤器,针对不同的类对设计了新颖的特征选择方法,并分别运行(和结果)。在对应的特征空间中学习一组一对一的分类器(支持向量机)。根据十倍交叉验证的评估程序,在可用传感器数据上证实了所提出方法的分类精度为100%。

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