Surface Roughness Discrimination Using Unsupervised Machine Learning Algorithms

Longhui Qin, Yilei Zhang
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引用次数: 1

Abstract

In this paper, the ability of unsupervised surface roughness discrimination is explored based on the developed bio-inspired artificial fingertip. At first, the original signals are analyzed and discriminated with the most widely used unsupervised algorithm, Kmeans clustering, applied. Then the technique of discrete wavelet transform and algorithm of sequential forward selection are utilized successively to select the most discriminative feature combination. The unsupervised discrimination results are presented and compared by using Kmeans based on different distances. The highest test accuracy reaches 72.93%±12.55% when the algorithm of Kmeans-SEuclidean is adopted and six discriminative features are selected, which showed that the developed tactile fingertip is effective in discriminating surface roughness based on unsupervised learning.
使用无监督机器学习算法的表面粗糙度判别
本文研究了基于仿生人工指尖的无监督表面粗糙度判别能力。首先,对原始信号进行分析和区分,应用最广泛使用的无监督算法Kmeans聚类。然后分别利用离散小波变换技术和序列前向选择算法,选择最具判别性的特征组合。采用基于不同距离的Kmeans对无监督判别结果进行了比较。采用Kmeans-SEuclidean算法并选择6个判别特征时,测试准确率最高,达到72.93%±12.55%,表明发达的触觉指尖能够有效地基于无监督学习判别表面粗糙度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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