Marano Giulio, Brambilla Cristina, Mira Robert Mihai, Scano Alessandro, Müller Henning, Atzori Manfredo
Information Systems Institute, University of Applied Sciences Western Switzerland (HES-SO Valais), 3960 Sierre, Switzerland.
Department of Computer, Control, and Management Engineering, La Sapienza University, 00185 Rome, Italy.
Sensors (Basel). 2021 Nov 11;21(22):7500. doi: 10.3390/s21227500.
One major challenge limiting the use of dexterous robotic hand prostheses controlled via electromyography and pattern recognition relates to the important efforts required to train complex models from scratch. To overcome this problem, several studies in recent years proposed to use transfer learning, combining pre-trained models (obtained from prior subjects) with training sessions performed on a specific user. Although a few promising results were reported in the past, it was recently shown that the use of conventional transfer learning algorithms does not increase performance if proper hyperparameter optimization is performed on the standard approach that does not exploit transfer learning. The objective of this paper is to introduce novel analyses on this topic by using a random forest classifier without hyperparameter optimization and to extend them with experiments performed on data recorded from the same patient, but in different data acquisition sessions. Two domain adaptation techniques were tested on the random forest classifier, allowing us to conduct experiments on healthy subjects and amputees. Differently from several previous papers, our results show that there are no appreciable improvements in terms of accuracy, regardless of the transfer learning techniques tested. The lack of adaptive learning is also demonstrated for the first time in an intra-subject experimental setting when using as a source ten data acquisitions recorded from the same subject but on five different days.
限制通过肌电图和模式识别控制的灵巧机器人手部假肢使用的一个主要挑战,涉及从零开始训练复杂模型所需的巨大努力。为克服这一问题,近年来的几项研究提议使用迁移学习,将预训练模型(从先前受试者获得)与在特定用户身上进行的训练环节相结合。尽管过去报道了一些有前景的结果,但最近表明,如果在不利用迁移学习的标准方法上进行适当的超参数优化,使用传统迁移学习算法并不会提高性能。本文的目的是通过使用无需超参数优化的随机森林分类器对该主题进行新颖的分析,并通过对同一患者在不同数据采集环节记录的数据进行实验来扩展这些分析。在随机森林分类器上测试了两种域适应技术,使我们能够在健康受试者和截肢者身上进行实验。与之前的几篇论文不同,我们的结果表明,无论测试哪种迁移学习技术,在准确性方面都没有明显提高。在受试者内实验设置中,当使用从同一受试者在五个不同日子记录的十个数据采集作为源数据时,首次证明了缺乏自适应学习。