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An Interactive Control Strategy is More Robust to Non-Optimal Classification Boundaries

机译:交互式控制策略对于非最佳分类边界更鲁棒

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We consider a new paradigm for EEG-based brain computer interface (BCT) cursor control involving signaling satisfaction or dissatisfaction with the current motion direction instead of the usual direct control of signaling rightward or leftward desired motion. We start by assuming that the same underlying EEC signals are used to either signal directly the intent for right and left motion or to signal satisfaction and dissatisfaction with the current motion. We model the paradigm as an absorbing Markov chain and show that while both the standard system and the new interactive system have equal information transfer rate (ITR) when the Bayes optimal classification boundary (between the underlying EEG feature distributions used for the two classes) is exactly known and non-changing, the interactive system is much more robust to using a suboptimal classification boundary. Due to non-stationarity of EEG recordings, in real systems the classification boundary will often be suboptimal for the current EEG signals. We note that a variable step size gives a higher ITR for both systems (but the same robustness improvement of the interactive system remains). Finally, we present a way to probabilistically combine classifiers of natural signals of satisfaction and dissatisfaction with classifiers using standard left/right controls.
机译:我们考虑基于EEG的脑计算机接口(BCT)光标控制的新范式,涉及对当前运动方向的信号满意或不满意,而不是通常的直接控制信号向右或向左的期望运动。我们首先假设使用相同的基础EEC信号直接表示左右运动的意图,或者表示对当前运动的满意和不满意。我们将范式建模为吸收性马尔可夫链,并证明当贝叶斯最优分类边界(用于两个类别的基本脑电特征分布之间)为贝叶斯最优分类边界时,尽管标准系统和新交互系统都具有相等的信息传输率(ITR)。完全已知且不变的是,交互式系统对于使用次优的分类边界要强大得多。由于EEG记录的不平稳性,在实际系统中,对于当前的EEG信号,分类边界通常不是最理想的。我们注意到,可变步长为两个系统都提供了更高的ITR(但交互式系统的鲁棒性仍得到了改善)。最后,我们提出了一种使用标准左/右控件概率性地将满意和不满意自然信号的分类器与分类器组合的方法。

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