Tigrini Andrea, Ranaldi Simone, Verdini Federica, Mobarak Rami, Scattolini Mara, Conforto Silvia, Schmid Maurizio, Burattini Laura, Gambi Ennio, Fioretti Sandro, Mengarelli Alessandro
Department of Information Engineering, Università Politecnica delle Marche, 60131 Ancona, Italy.
Deparment of Industrial, Electronics and Mechanical Engineering, Roma Tre University, 00146 Rome, Italy.
Bioengineering (Basel). 2024 May 4;11(5):458. doi: 10.3390/bioengineering11050458.
Recent studies have highlighted the possibility of using surface electromyographic (EMG) signals to develop human-computer interfaces that are also able to recognize complex motor tasks involving the hand as the handwriting of digits. However, the automatic recognition of words from EMG information has not yet been studied. The aim of this study is to investigate the feasibility of using combined forearm and wrist EMG probes for solving the handwriting recognition problem of 30 words with consolidated machine-learning techniques and aggregating state-of-the-art features extracted in the time and frequency domains. Six healthy subjects, three females and three males aged between 25 and 40 years, were recruited for the study. Two tests in pattern recognition were conducted to assess the possibility of classifying fine hand movements through EMG signals. The first test was designed to assess the feasibility of using consolidated myoelectric control technology with shallow machine-learning methods in the field of handwriting detection. The second test was implemented to assess if specific feature extraction schemes can guarantee high performances with limited complexity of the processing pipeline. Among support vector machine, linear discriminant analysis, and K-nearest neighbours (KNN), the last one showed the best classification performances in the 30-word classification problem, with a mean accuracy of 95% and 85% when using all the features and a specific feature set known as , respectively. The obtained results confirmed the validity of using combined wrist and forearm EMG data for intelligent handwriting recognition through pattern recognition approaches in real scenarios.
最近的研究强调了利用表面肌电图(EMG)信号开发人机接口的可能性,这种接口还能够识别涉及手部的复杂运动任务,如数字书写。然而,从肌电图信息中自动识别单词尚未得到研究。本研究的目的是探讨使用前臂和腕部联合肌电图探头,通过成熟的机器学习技术和汇总在时域和频域中提取的最新特征,来解决30个单词的手写识别问题的可行性。招募了6名健康受试者,年龄在25至40岁之间,其中3名女性和3名男性。进行了两项模式识别测试,以评估通过肌电图信号对手部精细运动进行分类的可能性。第一个测试旨在评估在手写检测领域使用成熟的肌电控制技术和浅层机器学习方法的可行性。第二个测试旨在评估特定的特征提取方案是否能在处理流程复杂度有限的情况下保证高性能。在支持向量机、线性判别分析和K近邻(KNN)中,最后一种方法在30个单词的分类问题中表现出最佳的分类性能,使用所有特征时平均准确率分别为95%和85%,使用一种称为 的特定特征集时也是如此。所得结果证实了在实际场景中通过模式识别方法使用腕部和前臂联合肌电图数据进行智能手写识别的有效性。