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Incremental Training of Neural Network for Motor Tasks Recognition Based on Brain-Computer Interface

机译:基于脑电电脑界面的电机任务识别神经网络的增量培训

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Brain-computer interfaces (BCI) based on motor imagery tasks (MI) have been established as a promising solution for restoring communication and control of people with motor disabilities. Physically impaired people may perform different motor imagery tasks which could be recorded in a non-invasive way using electroencephalography (EEG). However, the success of the MI-BCI systems depends on the reliable processing of the EEG signals and the adequate selection of the features used to characterize the brain activity signals for effective classification of MI activity and translation into corresponding actions. The multilayer perceptron (MLP) has been the neural network most widely used for classification in BCI technologies. The fact that MLP is a universal approximator makes this classifier sensitive to overtraining, especially with such noisy, non-linear, and non-stationary data as EEG. Traditional training techniques, as well as more recent ones, have mainly focused on the machinelearning aspects of BCI training. As a novel alternative for BCI training, this work proposes an incremental training process. Preliminary results with a non-disabled individual demonstrate that the proposed method has been able to improve the BCI training performance in comparison with the cross-validation technique. Best results showed that the incremental training proposal allowed an increase of the performance by at least 10% in terms of classification compared to a conventional cross-validation technique, which indicates the potential application for classification models of BCI's systems.
机译:基于电机图像任务(MI)的脑电脑界面(BCI)已被建立为恢复具有机动残障人士的沟通和控制的有希望的解决方案。物理受损的人可以执行不同的电动机图像任务,这些任务可以使用脑电图(EEG)以非侵入性方式记录。然而,MI-BCI系统的成功取决于EEG信号的可靠处理以及用于表征大脑活动信号的特征的足够选择,以便有效地分类MI活动和翻译成相应的动作。 MultiDayer Perceptron(MLP)是最广泛用于BCI技术分类的神经网络。 MLP是通用近似器的事实使得该分类器对过度训练敏感,特别是具有这种嘈杂,非线性和非静止数据作为脑电图。传统培训技术以及更近期的技术主要集中在BCI培训的机械学课程上。作为BCI培训的新选择,这项工作提出了一个增量培训过程。与非残疾人的初步结果表明,与交叉验证技术相比,所提出的方法能够改善BCI培训性能。最佳结果表明,与传统交叉验证技术相比,增量培训提案允许在分类方面将性能增加至少10%,这表明了BCI系统的分类模型的潜在应用。

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