In order to provide therapy in a functional context, controls for wearable robotic orthoses need to be robust and intuitive. We have previously introduced an intuitive, user-driven, EMG-based method to operate a robotic hand orthosis, but the process of training a control that is robust to concept drift (changes in the input signal) places a substantial burden on the user. In this paper, we explore semi-supervised learning as a paradigm for controlling a powered hand orthosis for stroke subjects. To the best of our knowledge, this is the first use of semi-supervised learning for an orthotic application. Specifically, we propose a disagreement-based semi-supervision algorithm for handling intrasession concept drift based on multimodal ipsilateral sensing. We evaluate the performance of our algorithm on data collected from five stroke subjects. Our results show that the proposed algorithm helps the device adapt to intrasession drift using unlabeled data and reduces the training burden placed on the user. We also validate the feasibility of our proposed algorithm with a functional task; in these experiments, two subjects successfully completed multiple instances of a pick-and-handover task.
翻译:为了在功能环境下提供治疗,对可磨损的机器人或物品的控制必须是稳健和直觉的。我们以前已经采用了一种直觉、用户驱动、基于环境管理集团的精密方法来操作机器人手动矫形,但是,培训一种对感知漂移(输入信号的变化)十分有力的控制过程给用户带来了沉重的负担。在本文中,我们探索半监督学习作为控制中风科目的手动矫形的范式。我们最了解的是,这是首次使用半监督学习来进行一种或显眼应用。具体地说,我们建议采用基于分歧的半监督算法来处理基于多式象感学的会间概念漂移。我们评价我们从五个中风主题收集的数据的算法的性能。我们的结果表明,拟议的算法有助于设备使用无标签的数据适应会间漂流,并减轻对用户的培训负担。我们还用功能任务验证了我们提议的算法的可行性;在这些实验中,我们成功地完成了两个主题的选手式任务。