触觉与脑电耦合增强物体形状分类性能

Monalisa Pal, A. Khasnobish, A. Konar, D. Tibarewala, R. Janarthanan
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引用次数: 6

摘要

在这项工作中,我们建立了一个事实,即在动态探索过程中使用脑电图和触觉信号比单独使用两者更好地完成物体形状识别。采用自适应自回归系数和Hjorth参数作为特征,使用线性支持向量机、Naïve贝叶斯、k近邻和树分类器进行分类。在此基础上,确定了存储高维触觉特征的空间复杂度。采用ReliefF算法作为降维技术。使用6阶多项式将EEG特征拟合到相应的触觉特征。这些预拟合的多项式用于在没有脑电测量装置的情况下预测脑电特征。最后,我们注意到使用这些预测特征以及触觉特征可以提高分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance enhancement of object shape classification by coupling tactile sensing with EEG
In this work we establish the fact that using Electroencephalogram (EEG) with tactile signal during dynamic exploration accomplishes object shape recognition better than using the either alone. Adaptive auto-regressive coefficients and Hjorth parameters are used as features which are classified using linear Support Vector Machine, Naïve Bayes, k-nearest neighbor and tree classifiers. Following this, the space complexity to store the high-dimensional tactile features is identified. ReliefF algorithm is used as a dimension reduction technique. A polynomial of order 6 is used to fit an EEG feature to a corresponding tactile feature. These pre-fitted polynomials are used to predict the EEG features in situation where EEG measuring device is not present. Finally we note that using these predicted features along with the tactile features yields enhanced classification accuracies.
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