论文标题
使用生成对抗网络重建ERP信号,以移动脑机接口
Reconstructing ERP Signals Using Generative Adversarial Networks for Mobile Brain-Machine Interface
论文作者
论文摘要
实用的脑机界面已被广泛研究,以使用现实世界中的脑信号准确检测人类意图。然而,由于行走和头部运动等文物,脑电图(EEG)信号被扭曲,因此脑信号可能幅度很大,而不是所需的EEG信号。由于这些工件,在移动环境中准确检测人类的意图是具有挑战性的。在本文中,我们在步行过程中使用与事件相关的电位(ERP)提出了基于生成对抗网络的重建框架。我们使用预先训练的卷积编码器来表示潜在变量,并通过类似于与Encoder的相反的生成模型进行重建ERP。最后,使用判别模型对ERP进行了分类,以证明我们提出的框架的有效性。结果,重建的信号具有重要的组件,例如N200和P300,类似于ERP。重建的脑电图的准确性类似于步行过程中原始嘈杂的脑电图信号。重建的脑电图的信噪比显着增加为1.3。生成模型的损失为0.6301,相对较低,这意味着训练生成模型具有高性能。重建的ERP因此在降低降噪作用过程中表现出分类性能的改善。提议的框架即使在移动环境中,也可以根据脑机界面来识别人类意图。
Practical brain-machine interfaces have been widely studied to accurately detect human intentions using brain signals in the real world. However, the electroencephalography (EEG) signals are distorted owing to the artifacts such as walking and head movement, so brain signals may be large in amplitude rather than desired EEG signals. Due to these artifacts, detecting accurately human intention in the mobile environment is challenging. In this paper, we proposed the reconstruction framework based on generative adversarial networks using the event-related potentials (ERP) during walking. We used a pre-trained convolutional encoder to represent latent variables and reconstructed ERP through the generative model which shape similar to the opposite of encoder. Finally, the ERP was classified using the discriminative model to demonstrate the validity of our proposed framework. As a result, the reconstructed signals had important components such as N200 and P300 similar to ERP during standing. The accuracy of reconstructed EEG was similar to raw noisy EEG signals during walking. The signal-to-noise ratio of reconstructed EEG was significantly increased as 1.3. The loss of the generative model was 0.6301, which is comparatively low, which means training generative model had high performance. The reconstructed ERP consequentially showed an improvement in classification performance during walking through the effects of noise reduction. The proposed framework could help recognize human intention based on the brain-machine interface even in the mobile environment.