招聘神经场理论用于运动图像脑机接口的数据增强

Daniel Polyakov, Peter A. Robinson, Eli J. Muller, Oren Shriki
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引用次数: 0

摘要

我们介绍了一种利用神经场理论(NFT)增强脑机接口(BCI)训练数据的新方法,该方法适用于运动想象任务的脑电图数据。由于训练数据量有限,BCI 的准确性往往受到限制。为了解决这个问题,我们利用皮质-丘脑 NFT 模型生成人工脑电图时间序列作为补充训练数据。我们利用 BCI 竞赛 IV '2a' 数据集来评估这种增强技术。对于每个个体,我们将模型拟合为每个运动图像类别的常见空间模式,抖动拟合参数,并生成用于数据增强的时间序列。我们的方法使 "总功率 "特征分类的准确率大幅提高了 2%以上,但 "樋口分形维度 "特征分类的准确率却没有提高。这表明,拟合的 NFT 模型可能比其他模型更适合代表一种特征。这些发现为进一步探索基于 NFT 的数据增强铺平了道路,凸显了生物物理精确人工数据的优势。
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Recruiting neural field theory for data augmentation in a motor imagery brain–computer interface
We introduce a novel approach to training data augmentation in brain–computer interfaces (BCIs) using neural field theory (NFT) applied to EEG data from motor imagery tasks. BCIs often suffer from limited accuracy due to a limited amount of training data. To address this, we leveraged a corticothalamic NFT model to generate artificial EEG time series as supplemental training data. We employed the BCI competition IV ‘2a’ dataset to evaluate this augmentation technique. For each individual, we fitted the model to common spatial patterns of each motor imagery class, jittered the fitted parameters, and generated time series for data augmentation. Our method led to significant accuracy improvements of over 2% in classifying the “total power” feature, but not in the case of the “Higuchi fractal dimension” feature. This suggests that the fit NFT model may more favorably represent one feature than the other. These findings pave the way for further exploration of NFT-based data augmentation, highlighting the benefits of biophysically accurate artificial data.
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