论文标题
分类算法与特定主题和主体独立BCI的比较
Comparison of Classification Algorithms Towards Subject-Specific and Subject-Independent BCI
论文作者
论文摘要
由于特定于主题的数据收集和校准以及苛刻的系统适应要求,机动图像大脑计算机界面设计被认为很困难。最近,主题独立的(SI)设计受到了关注,因为它们可能适用于多个用户,而无需事先校准和严格的系统适应。 SI设计具有挑战性,在文献中表现出较低的精度。系统性能的两个主要因素是分类算法和可用数据的质量。本文介绍了SS和SI范式的分类性能的比较研究。我们的结果表明,SS模型的分类算法表现出较大的性能差异。因此,可能需要每个受试者的不同分类算法。 SI模型显示出较低的性能差异,但仅在样本量相对较大的情况下才能使用。对于SI模型,LDA和CART的小样本量分别具有最高的精度,而我们假设如果有大型训练样品大小,则SVM优于其他分类器。此外,应该选择使用用户的设计方法。尽管SS设计对于特定主题而言更有希望,但对于精神或身体上挑战的用户来说,SI方法可能更方便。
Motor imagery brain computer interface designs are considered difficult due to limitations in subject-specific data collection and calibration, as well as demanding system adaptation requirements. Recently, subject-independent (SI) designs received attention because of their possible applicability to multiple users without prior calibration and rigorous system adaptation. SI designs are challenging and have shown low accuracy in the literature. Two major factors in system performance are the classification algorithm and the quality of available data. This paper presents a comparative study of classification performance for both SS and SI paradigms. Our results show that classification algorithms for SS models display large variance in performance. Therefore, distinct classification algorithms per subject may be required. SI models display lower variance in performance but should only be used if a relatively large sample size is available. For SI models, LDA and CART had the highest accuracy for small and moderate sample size, respectively, whereas we hypothesize that SVM would be superior to the other classifiers if large training sample-size was available. Additionally, one should choose the design approach considering the users. While the SS design sound more promising for a specific subject, an SI approach can be more convenient for mentally or physically challenged users.