School of Computing, Korea Advanced Institute of Science and Technology, Daejeon, South Korea.
School of Computing, Korea Advanced Institute of Science and Technology, Daejeon, South Korea.
Comput Methods Programs Biomed. 2022 Sep;224:107022. doi: 10.1016/j.cmpb.2022.107022. Epub 2022 Jul 15.
This paper investigates a novel way to interact with home appliances via a brain-computer interface (BCI), using electroencephalograph (EEG) signals acquired from around the user's ears with a custom-made wearable BCI headphone.
The users engage in speech imagery (SI), a type of mental task where they imagine speaking out a specific word without producing any sound, to control an interactive simulated home appliance. In this work, multiple models are employed to improve the performance of the system. Temporally-stacked multi-band covariance matrix (TSMBC) method is used to represent the neural activities during SI tasks with spatial, temporal, and spectral information included. To further increase the usability of our proposed system in daily life, a calibration session, where the pre-trained models are fine-tuned, is added to maintain performance over time with minimal training. Eleven participants were recruited to evaluate our method over three different sessions: a training session, a calibration session, and an online session where users were given the freedom to achieve a given goal on their own.
In the offline experiment, all participants were able to achieve a classification accuracy significantly higher than the chance level. In the online experiments, a few participants were able to use the proposed system to freely control the home appliance with high accuracy and relatively fast command delivery speed. The best participant achieved an average true positive rate and command delivery time of 0.85 and 3.79 s/command, respectively.
Based on the positive experimental results and user surveys, the novel ear-EEG-SI-based BCI paradigm is a promising approach for the wearable BCI system for daily life.
本文提出了一种通过脑机接口(BCI)利用定制的可穿戴式 BCI 耳机从用户耳部周围采集脑电(EEG)信号与家用电器进行交互的新方法。
用户进行言语想象(SI),即想象说出特定词语而不发出任何声音的心理任务,以控制交互式模拟家用电器。在这项工作中,采用了多种模型来提高系统性能。时频堆叠多带宽协方差矩阵(TSMBC)方法用于表示 SI 任务期间的神经活动,包括空间、时间和频谱信息。为了进一步提高我们提出的系统在日常生活中的可用性,添加了校准会话,其中对预训练模型进行微调,以在最小训练的情况下随着时间的推移保持性能。11 名参与者被招募来在三个不同的会话中评估我们的方法:培训会话、校准会话和在线会话,在线会话中,用户可以自由地根据自己的情况实现给定的目标。
在离线实验中,所有参与者都能够实现显著高于随机水平的分类准确率。在在线实验中,有几个参与者能够使用所提出的系统以高精度和相对较快的命令传递速度自由控制家用电器。最佳参与者的平均真阳性率和命令传递时间分别为 0.85 和 3.79 s/命令。
基于积极的实验结果和用户调查,基于新型耳部 EEG-SI 的 BCI 范式是一种有前途的可穿戴 BCI 系统日常应用方法。