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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Asynchronous P300-Based Brain--Computer Interfaces: A Computational Approach With Statistical Models
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Asynchronous P300-Based Brain--Computer Interfaces: A Computational Approach With Statistical Models

机译:基于P300的异步脑机接口:具有统计模型的计算方法

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摘要

Asynchronous control is an important issue for brain--computer interfaces (BCIs) working in real-life settings, where the machine should determine from brain signals not only the desired command but also when the user wants to input it. In this paper, we propose a novel computational approach for robust asynchronous control using electroencephalogram (EEG) and a P300-based oddball paradigm. In this approach, we first address the mathematical modeling of target P300, nontarget P300, and noncontrol signals, by using Gaussian distribution models in a support vector margin space. Furthermore, we derive a method to compute the likelihood of control state in a time window of EEG. Finally, we devise a recursive algorithm to detect control states in ongoing EEG for online application. We conducted experiments with four subjects to study both the asynchronous BCI''s receiver operating characteristics and its performance in actual online tests. The results show that the BCI is able to achieve an averaged information transfer rate of approximately 20 b/min at a low false positive rate (one event per minute).
机译:对于在现实环境中工作的脑机接口(BCI)而言,异步控制是一个重要问题,在该环境中,机器不仅应从大脑信号中确定所需命令,而且还应从用户想要输入时确定。在本文中,我们提出了一种使用脑电图(EEG)和基于P300的奇数球范例进行鲁棒异步控制的新颖计算方法。在这种方法中,我们首先通过在支持向量裕量空间中使用高斯分布模型来处理目标P300,非目标P300和非控制信号的数学建模。此外,我们推导了一种方法来计算脑电图时间窗口中控制状态的可能性。最后,我们设计了一种递归算法来检测在线应用中正在进行的EEG中的控制状态。我们对四个主题进行了实验,以研究异步BCI接收器的工作特性及其在实际在线测试中的性能。结果表明,BCI能够以低的假阳性率(每分钟一个事件)实现大约20 b / min的平均信息传输率。

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