首页> 外文期刊>Journal of ambient intelligence and humanized computing >Thumbs up, thumbs down: non-verbal human-robot interaction through real-time EMG classification via inductive and supervised transductive transfer learning
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Thumbs up, thumbs down: non-verbal human-robot interaction through real-time EMG classification via inductive and supervised transductive transfer learning

机译:竖起大拇指,拇指向下:非言语人机通过电感和监督转移学习的实时EMG分类互动

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摘要

In this study, we present a transfer learning method for gesture classification via an inductive and supervised transductive approach with an electromyographic dataset gathered via the Myo armband. A ternary gesture classification problem is presented by states of'thumbs up','thumbs down', and'relax'in order to communicate in the affirmative or negative in a non-verbal fashion to a machine. Of the nine statistical learning paradigms benchmarked over 10-fold cross validation (with three methods of feature selection), an ensemble of Random Forest and Support Vector Machine through voting achieves the best score of 91.74% with a rule-based feature selection method. When new subjects are considered, this machine learning approach fails to generalise new data, and thus the processes of Inductive and Supervised Transductive Transfer Learning are introduced with a short calibration exercise (15 s). Failure of generalisation shows that 5 s of data per-class is the strongest for classification (versus one through seven seconds) with only an accuracy of 55%, but when a short 5 s per class calibration task is introduced via the suggested transfer method, a Random Forest can then classify unseen data from the calibrated subject at an accuracy of around 97%, outperforming the 83% accuracy boasted by the proprietary Myo system. Finally, a preliminary application is presented through social interaction with a humanoid Pepper robot, where the use of our approach and a most-common-class metaclassifier achieves 100% accuracy for all trials of a '20 Questions' game.
机译:在本研究中,我们通过电感和监督的转换方法提出了一种用于手势分类的传递学习方法,通过Myo Armband收集的电拍摄数据集。三元手势分类问题是由umbs向上','拇指向下'的状态呈现,并将在非言语时尚的肯定或负面沟通到机器。在九个统计学习范例中,通过10倍交叉验证基准(具有三种特征选择),通过投票的随机林和支持向量机的集合实现了基于规则的特征选择方法的最佳成绩为91.74%。当考虑新的科目时,该机器学习方法未能概括新数据,因此引入了电感和监督转移学习的过程,简短校准练习(15s)。泛化的失败表明,每级数据的5秒是分类(与一到七秒)最强,只有55%的准确度,但是当通过建议的传输方法引入时,当每级校准任务短5秒时,然后,随机森林可以以大约97%的精确度将看不见的数据从校准的主体进行分类,优于专有的Myo系统的83%的精度。最后,通过与人形辣椒机器人的社交互动来介绍初步应用,其中我们的方法和最常见的MetaClassifier达到了“20个问题”游戏的所有试验的100%准确性。

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