Suppr超能文献

注意与分心的自我调节运动任务之间的运动准备的分类。

Classification of Movement Preparation Between Attended and Distracted Self-Paced Motor Tasks.

出版信息

IEEE Trans Biomed Eng. 2019 Nov;66(11):3060-3071. doi: 10.1109/TBME.2019.2900206. Epub 2019 Feb 18.

Abstract

OBJECTIVE

Brain-computer interface (BCI) systems aim to control external devices by using brain signals. The performance of these systems is influenced by the user's mental state, such as attention. In this study, we classified two attention states to a target task (attended and distracted task level) while attention to the task is altered by one of three types of distractors.

METHODS

A total of 27 participants were allocated into three experimental groups and exposed to one type of distractor. An attended condition that was the same across the three groups comprised only the main task execution (self-paced dorsiflexion) while the distracted condition was concurrent execution of the main task and an oddball task (dual-task condition). Electroencephalography signals were recorded from 28 electrodes to classify the two attention states of attended or distracted task conditions by extracting temporal and spectral features.

RESULTS

The results showed that the ensemble classification accuracy using the combination of temporal and spectral features (spectro-temporal features, 82.3 ± 2.7%) was greater than using temporal (69 ± 2.2%) and spectral (80.3 ± 2.6%) features separately. The classification accuracy was computed using a combination of different channel locations, and it was demonstrated that a combination of parietal and centrally located channels was superior for classification of two attention states during movement preparation (parietal channels: 84.6 ± 1.3%, central and parietal channels: 87.2 ± 1.5%).

CONCLUSION

It is possible to monitor the users' attention to the task for different types of distractors.

SIGNIFICANCE

It has implications for online BCI systems where the requirement is for high accuracy of intention detection.

摘要

目的

脑-机接口(BCI)系统旨在通过使用脑信号来控制外部设备。这些系统的性能受到用户的精神状态的影响,例如注意力。在这项研究中,我们在进行一项目标任务时将两种注意力状态分类(专注和分心任务水平),而注意力则通过三种干扰源中的一种来改变。

方法

共有 27 名参与者被分配到三个实验组中,并暴露于一种干扰源下。一个在三组中都相同的专注条件仅包括主要任务的执行(自我调节的背屈),而分心条件则是同时执行主要任务和一个奇异任务(双重任务条件)。记录了 28 个电极的脑电图信号,通过提取时间和频谱特征来对两种注意力状态(专注或分心任务条件)进行分类。

结果

结果表明,使用时间和频谱特征(时频谱特征,82.3±2.7%)的集合分类准确率大于单独使用时间(69±2.2%)和频谱(80.3±2.6%)特征。使用不同通道位置的组合计算了分类准确率,并表明在运动准备期间,使用顶叶和中央位置的通道组合进行两种注意力状态的分类效果更好(顶叶通道:84.6±1.3%,中央和顶叶通道:87.2±1.5%)。

结论

可以监测到用户对不同类型干扰源的任务注意力。

意义

这对在线 BCI 系统具有重要意义,因为在线 BCI 系统需要高意图检测精度。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验