论文标题
通过基于故障的数据获取来修复脑计算机界面
Repairing Brain-Computer Interfaces with Fault-Based Data Acquisition
论文作者
论文摘要
脑部计算机界面(BCIS)解码从大脑记录的神经信号和/或用编码的神经信号刺激大脑。 BCIS涵盖了硬件和软件,并且在恢复医学方面具有广泛的应用,从恢复运动和机器人的四肢运动到通过拼写恢复感觉和通信。 BCIS还在诊断医学中有应用,例如为临床医生提供检测癫痫发作,睡眠模式或情绪的数据。 尽管他们承诺,但由于与可靠性和鲁棒性相关的挑战,BCIS尚未用于长期,日常使用,这在所有情况下都是安全操作所需的。确保安全运行目前需要数小时的手动数据收集和重新校准,涉及患者和临床医生。但是,数据收集并非针对消除BCI中的特定故障。本文提出了一种新方法,用于表征BCIS中的表征,检测和本地化故障。具体而言,它提出了部分测试术语作为检测故障和切片功能的方法,作为将故障定位到输入数据中特征模式或用户执行的相关任务的方法。通过有针对性的数据获取和再培训,提出的方法可以提高BCI的正确性。我们评估了五个BCI应用的拟议方法。结果表明,提出的方法(1)精确地定位了故障,(2)可以通过基于目标的,基于故障的数据采集来大大降低故障的频率。这些结果表明,提出的方法是修复错误的BCIS迈出的有希望的步骤。
Brain-computer interfaces (BCIs) decode recorded neural signals from the brain and/or stimulate the brain with encoded neural signals. BCIs span both hardware and software and have a wide range of applications in restorative medicine, from restoring movement through prostheses and robotic limbs to restoring sensation and communication through spellers. BCIs also have applications in diagnostic medicine, e.g., providing clinicians with data for detecting seizures, sleep patterns, or emotions. Despite their promise, BCIs have not yet been adopted for long-term, day-to-day use because of challenges related to reliability and robustness, which are needed for safe operation in all scenarios. Ensuring safe operation currently requires hours of manual data collection and recalibration, involving both patients and clinicians. However, data collection is not targeted at eliminating specific faults in a BCI. This paper presents a new methodology for characterizing, detecting, and localizing faults in BCIs. Specifically, it proposes partial test oracles as a method for detecting faults and slice functions as a method for localizing faults to characteristic patterns in the input data or relevant tasks performed by the user. Through targeted data acquisition and retraining, the proposed methodology improves the correctness of BCIs. We evaluated the proposed methodology on five BCI applications. The results show that the proposed methodology (1) precisely localizes faults and (2) can significantly reduce the frequency of faults through retraining based on targeted, fault-based data acquisition. These results suggest that the proposed methodology is a promising step towards repairing faulty BCIs.