Aydemir Onder, Kayikcioglu Temel
Karadeniz Technical University, Faculty of Engineering, Department of Electrical and Electronics Engineering, 61080 Trabzon, Turkey.
J Neurosci Methods. 2014 May 30;229:68-75. doi: 10.1016/j.jneumeth.2014.04.007. Epub 2014 Apr 19.
Input signals of an EEG based brain computer interface (BCI) system are naturally non-stationary, have poor signal to noise ratio, depend on physical or mental tasks and are contaminated with various artifacts such as external electromagnetic waves, electromyogram and electrooculogram. All these disadvantages have motivated researchers to substantially improve speed and accuracy of all components of the communication system between brain and a BCI output device.
In this study, a fast and accurate decision tree structure based classification method was proposed for classifying EEG data to up/down/right/left computer cursor movement imagery EEG data. The data sets were acquired from three healthy human subjects in age group of between 24 and 29 years old in two sessions on different days.
The proposed decision tree structure based method was successfully applied to the present data sets and achieved 55.92%, 57.90% and 82.24% classification accuracy rate on the test data of three subjects.
COMPARISON WITH EXISTING METHOD(S): The results indicated that the proposed method provided 12.25% improvement over the best results of the most closely related studies although the EEG signals were collected on two different sessions with about 1 week interval.
The proposed method required only a training set of the subject and automatically generated specific DTS for each new subject by determining the most appropriate feature set and classifier for each node. Additionally, with further developments of feature extraction and/or classification algorithms, any existing node can be easily replaced with new one without breaking the whole DTS. This attribute makes the proposed method flexible.
基于脑电图(EEG)的脑机接口(BCI)系统的输入信号具有天然的非平稳性,信噪比差,依赖于身体或心理任务,并且受到各种伪迹的污染,如外部电磁波、肌电图和眼电图。所有这些缺点促使研究人员大幅提高大脑与BCI输出设备之间通信系统所有组件的速度和准确性。
在本研究中,提出了一种基于快速准确决策树结构的分类方法,用于将EEG数据分类为上/下/右/左计算机光标移动想象EEG数据。数据集是从三名年龄在24至29岁之间的健康人类受试者在不同日期的两个时间段采集的。
所提出的基于决策树结构的方法成功应用于当前数据集,在三名受试者的测试数据上分别达到了55.92%、57.90%和82.24%的分类准确率。
结果表明,尽管EEG信号是在间隔约1周的两个不同时间段采集的,但所提出的方法比最相关研究的最佳结果提高了12.25%。
所提出的方法仅需要受试者的一个训练集,并通过为每个节点确定最合适的特征集和分类器,为每个新受试者自动生成特定的决策树结构。此外,随着特征提取和/或分类算法的进一步发展,任何现有节点都可以很容易地被新节点替换,而不会破坏整个决策树结构。这一特性使所提出的方法具有灵活性。