脑机接口的半监督深度对抗学习

Wonjun Ko, Eunjin Jeon, Jiyeon Lee, Heung-Il Suk
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引用次数: 11

摘要

近年来,深度学习的发展对脑机接口的研究产生了积极的影响。特别是,具有不同结构形式的卷积神经网络(cnn)已被研究用于时空或空间光谱特征表示学习。然而,由于鲁棒性需要大量带注释的训练样本,因此仍然存在许多挑战和限制。在本文中,我们提出了一种半监督深度对抗学习框架,该框架有效地利用生成的人工样本以及标记和未标记的真实样本来发现类别区分特征,以提高分类器的鲁棒性,从而提高BCI性能。同样值得注意的是,所提出的框架允许利用未标记的真实样本来更好地揭示用户脑电图信号中固有的潜在模式。为了证明所提出框架的有效性,我们在公共BCI竞赛IV-IIa数据集上使用“循环时空神经网络”CNN架构进行了详尽的实验。从我们的实验中,我们可以观察到,与传统框架的竞争方法相比,性能有统计学上的显著提高。我们还在激活模式图、提取特征的可分离性和生成的人工样本的有效性方面可视化了学习卷积权重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-Supervised Deep Adversarial Learning for Brain-Computer Interface
Recent advances in deep learning have made a progressive impact on BCI researches. In particular, convolutional neural networks (CNNs) with different architectural forms have been studied for spatio-temporal or spatio-spectral feature representation learning. However, there still remain many challenges and limitations due to the necessity of a large annotated training samples for robustness. In this paper, we propose a semi-supervised deep adversarial learning framework that effectively utilizes generated artificial samples along with labeled and unlabelled real samples in discovering class-discriminative features to boost robustness of a classifier, thus to enhance BCI performance. It is also noteworthy that the proposed framework allows to exploit unlabelled real samples to better uncover the underlying patterns inherent in a user’s EEG signals. In order to justify the validity of the proposed framework, we conducted exhaustive experiments with ‘Recurrent Spatio-Temporal Neural Network’ CNN architectures over the public BCI Competition IV-IIa dataset. From our experiments, we could observe statistically significant improvements on performance, compared to the competing methods with the conventional framework. We have also visualized learned convolutional weights in terms of activation pattern maps, separability of extracted features, and validity of generated artificial samples.
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