日常生活活动中肌电图识别抓取的困难

Valentina Gregori, B. Caputo, A. Gijsberts
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引用次数: 1

摘要

应用机器学习从表面肌电图中识别手部运动已经取得了很好的学术成果。不幸的是,事实证明很难将这些结果转化为上肢假肢最终用户更好的控制方法。最近的研究指出,常见的离线性能指标,如分类精度,与假体的真实可控性无关。在本文中,我们研究了学习模型在受约束的实验室环境之外应用时开始失败的原因。我们在一个专门的数据采集中进行了一些分析,包括第一阶段的典型学术培训课程和之后在家庭环境中的一系列日常生活活动。我们的分析证实,在前一种环境中训练的模型在应用于家庭环境时表现不佳。造成这种退化的原因是肌电数据的分布在两种设置之间发生了变化,从而违反了统计学习理论中训练和测试数据来自相同分布的典型假设。即使在添加在某些家庭活动中获得的数据以对其他活动进行分类时,这个问题仍然存在。我们的结果不仅证实了离线性能指标对真实假体可用性的有限重要性,而且还强调了基于机器学习的方法需要克服的困难才能变得具有实际意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Difficulty of Recognizing Grasps from sEMG during Activities of Daily Living
The application of machine learning to recognize hand movements from surface electromyography has led to promising academic results. Unfortunately, it has proven difficult to translate these results in better control methods for the end-users of upper-limb prostheses. Recent studies have pointed out that common offline performance metrics, such as classification accuracy, are not correlated with real controllability of the prosthesis. In this paper, we investigate the cause that learned models start to fail when applied outside the constrained laboratory setting. We performed several analyses at the hand of a dedicated data acquisition composed of a typical academic training session in the first phase and a set of activities of daily living in a home setting afterwards. Our analysis confirms that a model trained in the former setting performs poorly when applied in a home environment. The cause for this degradation is that the distribution of myoelectric data changes between both settings, thus violating the typical assumption in statistical learning theory that train and test data come from the same distribution. This problem persists even when adding data acquired in some home activities to classify others. Our result not only confirms the limited importance of offline performance metrics for real prosthesis usability, but also highlights the difficulties machine learning based approaches will need to overcome to become practically relevant.
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