Discrimination of hand gestures based on the decoding of surface electromyography (sEMG) signals is a well-establish approach for controlling prosthetic devices and for Human-Machine Interfaces (HMI). However, despite the promising results achieved by this approach in well-controlled experimental conditions, its deployment in long-term real-world application scenarios is still hindered by several challenges. One of the most critical challenges is maintaining high EMG data classification performance across multiple days without retraining the decoding system. The drop in performance is mostly due to the high EMG variability caused by electrodes shift, muscle artifacts, fatigue, user adaptation, or skin-electrode interfacing issues. Here we propose a novel statistical method based on canonical correlation analysis (CCA) that stabilizes EMG classification performance across multiple days for long-term control of prosthetic devices. We show how CCA can dramatically decrease the performance drop of standard classifiers observed across days, by maximizing the correlation among multiple-day acquisition data sets. Our results show how the performance of a classifier trained on EMG data acquired only of the first day of the experiment maintains 90% relative accuracy across multiple days, compensating for the EMG data variability that occurs over long-term periods, using the CCA transformation on data obtained from a small number of gestures. This approach eliminates the need for large data sets and multiple or periodic training sessions, which currently hamper the usability of conventional pattern recognition based approaches
翻译:基于地表电感学(SEMG)信号解码的手势歧视,是控制假肢装置和人类-海洋界面(HMI)的完善方法。然而,尽管这一方法在控制良好的实验条件下取得了令人乐观的成果,但在长期现实应用情景中仍受到若干挑战的阻碍。最严峻的挑战之一是在不对解码系统进行再培训的情况下,保持多日高的环境管理小组数据分类性能,而没有对解码系统进行再培训。性能下降的主要原因是电极转换、肌肉人工制品、疲劳、用户适应或皮肤-电极接口问题造成的高度变异性。在这里,我们提出一种新的统计方法,根据这种方法在严格控制实验性关系分析(CCA)的基础上,稳定环境管理小组在长期实际应用假肢装置的长期控制方面多日的分类性业绩。我们表明,环境小组如何通过最大限度地提高多日获取数据集之间的关联性能,大幅降低连续观察的标准分类性能下降。我们的结果显示,在只从试验第一天获得的环境管理小组数据、肌肉人工、疲劳、用户适应或皮肤-电子电极极极极相交的交互性分析方法,在多日中保持了90%的定期数据变异性,用大规模数据序列进行大规模数据分析。我们的数据需要进行大规模的大规模变换成。