In brain-computer interfaces (BCI), most of the approaches based on event-related potential (ERP) focus on the detection of P300, aiming for single trial classification for a speller task. While this is an important objective, existing P300 BCI still require several repetitions to achieve a correct classification accuracy. Signal processing and machine learning advances in P300 BCI mostly revolve around the P300 detection part, leaving the character classification out of the scope. To reduce the number of repetitions while maintaining a good character classification, it is critical to embrace the full classification problem. We introduce an end-to-end pipeline, starting from feature extraction, and is composed of an ERP-level classification using probabilistic Riemannian MDM which feeds a character-level classification using Bayesian accumulation of confidence across trials. Whereas existing approaches only increase the confidence of a character when it is flashed, our new pipeline, called Bayesian accumulation of Riemannian probabilities (ASAP), update the confidence of each character after each flash. We provide the proper derivation and theoretical reformulation of this Bayesian approach for a seamless processing of information from signal to BCI characters. We demonstrate that our approach performs significantly better than standard methods on public P300 datasets.
翻译:在大脑-计算机界面(BCI)中,基于事件相关潜力(ERP)的大多数方法都侧重于探测P300, 目的是为一项拼写任务进行单一试级,这是一个重要的目标,但现有的P300 BCI仍需要若干重复才能达到正确的分类准确性。P300 BCI的信号处理和机器学习进展主要围绕P300探测部分,使字符分类脱离范围。为了减少重复次数,同时保持良好的性格分类,必须接受全面的分类问题。我们从地物提取开始,采用从端到端的管道,由企业资源规划一级分类组成,使用概率性里曼曼尼亚MDMDM,利用巴耶斯人在各个试验中积累的信心,作为性格分类的基础。虽然现有的方法只能提高某个字符在闪烁时的信心,但我们的新管道称为Bemannian概率积累(ASAP),在每次闪烁后更新每个字符的信心。我们用适当的衍生和理论重订了巴伊西亚方法,以便从公共信号到BCI字符的无缝处理方法。我们用比BCI更精确的方法展示了。