论文标题
对非侵入性脑部计算机接口的调查:Epmiv Epoc+ Neuroheadset及其有效性
An Investigation on Non-Invasive Brain-Computer Interfaces: Emotiv Epoc+ Neuroheadset and Its Effectiveness
论文作者
论文摘要
在这项研究中,我们说明了BCI研究的进展,并目前是揭露的当代方法。首先,我们探索了一种解码的自然语音方法,该方法旨在将人脑直接解码到Facebook Reality Lab和加利福尼亚大学旧金山推出的数字屏幕上。然后,我们研究了一个最近呈现的有远见的项目,以使用脑机界面(BMI)方法来控制人脑。 We also investigate well-known electroencephalography (EEG) based Emotiv Epoc+ Neuroheadset to identify six emotional parameters including engagement, excitement, focus, stress, relaxation, and interest using brain signals by experimenting the neuroheadset among three human subjects where we utilize two supervised learning classifiers, Naive Bayes and Linear Regression to show the accuracy and competency of the Epoc+ device and its associated applications in neurotechnological 研究。我们介绍了实验研究,示例表明,在阅读参与者的性能矩阵时,上述分类器的准确性分别提高了69%和62%。我们想到,不创,可插入和低成本的BCI方法不仅是身体麻痹患者的替代品的焦点,而且还了解大脑,这些大脑将铺平我们,以便我们访问和控制附近的记忆和大脑。
In this study, we illustrate the progress of BCI research and present scores of unveiled contemporary approaches. First, we explore a decoding natural speech approach that is designed to decode human speech directly from the human brain onto a digital screen introduced by Facebook Reality Lab and University of California San Francisco. Then, we study a recently presented visionary project to control the human brain using Brain-Machine Interfaces (BMI) approach. We also investigate well-known electroencephalography (EEG) based Emotiv Epoc+ Neuroheadset to identify six emotional parameters including engagement, excitement, focus, stress, relaxation, and interest using brain signals by experimenting the neuroheadset among three human subjects where we utilize two supervised learning classifiers, Naive Bayes and Linear Regression to show the accuracy and competency of the Epoc+ device and its associated applications in neurotechnological research. We present experimental studies and the demonstration indicates 69% and 62% improved accuracy for the aforementioned classifiers respectively in reading the performance matrices of the participants. We envision that non-invasive, insertable, and low-cost BCI approaches shall be the focal point for not only an alternative for patients with physical paralysis but also understanding the brain that would pave us to access and control the memories and brain somewhere very near.