Objective: We present a transfer learning method for datasets with different dimensionaliti'/> Dimensionality Transcending: A Method for Merging BCI Datasets With Different Dimensionalities
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Dimensionality Transcending: A Method for Merging BCI Datasets With Different Dimensionalities

机译:维度超越:一种利用不同维度的BCI数据集的方法

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Objective: We present a transfer learning method for datasets with different dimensionalities, coming from different experimental setups but representing the same physical phenomena. We focus on the case where the data points are symmetric positive definite (SPD) matrices describing the statistical behavior of EEG-based brain computer interfaces (BCI). Method: Our proposal uses a two-step procedure that transforms the data points so that they become matched in terms of dimensionality and statistical distribution. In the dimensionality matching step, we use isometric transformations to map each dataset into a common space without changing their geometric structures. The statistical matching is done using a domain adaptation technique adapted for the intrinsic geometry of the space where the datasets are defined. Results: We illustrate our proposal on time series obtained from BCI systems with different experimental setups (e.g., different number of electrodes, different placement of electrodes). The results show that the proposed method can be used to transfer discriminative information between BCI recordings that, in principle, would be incompatible. Conclusion and significance: Such findings pave the way to a new generation of BCI systems capable of reusing information and learning from several sources of data despite differences in their electrodes positioning.
机译:目标:我们提出了具有不同尺寸的数据集的转移学习方法,来自不同的实验设置,但代表相同的物理现象。我们专注于数据点是对称正定(SPD)矩阵的情况,描述了基于EEG的大脑电脑接口(BCI)的统计行为。 方法:我们的提案使用转换数据点的两步过程,以便在维度和统计分布方面变得匹配。在维度匹配步骤中,我们使用等距变换来将每个数据集映射到公共空间,而不改变其几何结构。使用适用于定义数据集的空间的内在几何形状的域适配技术进行统计匹配。 结果:我们说明我们关于从BCI系统获得的时间序列的提议,其中具有不同的实验设置(例如,电极数量的不同数量的电极,电极放置)。结果表明,该方法可用于在BCI记录之间传输鉴别信息,原则上将是不相容的。 结论和意义:这种发现可以为能够重用信息的新一代BCI系统,尽管它们的电极定位有差异,但尽管它们的电极定位差异,但是从多个数据来源中学习。

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