Ramele Rodrigo, Villar Ana Julia, Santos Juan Miguel
Computer Engineering Department, Instituto Tecnológico de Buenos Aires (ITBA), Buenos Aires 1441, Argentina.
Brain Sci. 2018 Nov 16;8(11):199. doi: 10.3390/brainsci8110199.
The Electroencephalography (EEG) is not just a mere clinical tool anymore. It has become the de-facto mobile, portable, non-invasive brain imaging sensor to harness brain information in real time. It is now being used to translate or decode brain signals, to diagnose diseases or to implement Brain Computer Interface (BCI) devices. The automatic decoding is mainly implemented by using quantitative algorithms to detect the cloaked information buried in the signal. However, clinical EEG is based intensively on waveforms and the structure of signal plots. Hence, the purpose of this work is to establish a bridge to fill this gap by reviewing and describing the procedures that have been used to detect patterns in the electroencephalographic waveforms, benchmarking them on a controlled pseudo-real dataset of a P300-Based BCI Speller and verifying their performance on a public dataset of a BCI Competition.
脑电图(EEG)不再仅仅是一种临床工具。它已成为事实上的可移动、便携式、非侵入性脑成像传感器,能够实时获取大脑信息。现在,它被用于翻译或解码脑信号、诊断疾病或实现脑机接口(BCI)设备。自动解码主要通过使用定量算法来检测信号中隐藏的信息来实现。然而,临床脑电图主要基于波形和信号图的结构。因此,这项工作的目的是通过回顾和描述用于检测脑电图波形模式的程序,在基于P300的BCI拼写器的受控伪真实数据集上对其进行基准测试,并在BCI竞赛的公共数据集上验证其性能,来建立一座桥梁以填补这一空白。