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Domain Transfer Multiple Kernel Boosting for Classification of EEG Motor Imagery Signals

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TLDR
A novel framework called domain transfer multiple kernel boosting (DTMKB), which extends the DTMKL algorithms by applying boosting techniques for learning kernel-based classifiers with the transfer of multiple kernels, which can be applied successfully in a small sample of EEG motor imagery signals.
Abstract
The application of wireless sensors in the brain-computer interface (BCI) system provides great convenience for the acquisition of electroencephalography (EEG) signals. However, a large amount of training data is needed to build the classification architectures used in motor imagery (MI) brain-computer interface (BCI), which is time-consuming to generate. To address this issue, transfer learning has gained significant attention in a small sample setting BCI system. The transfer learning methods have shown promising results by leveraging labeled patterns from the source domain to learn robust classifiers for the target domain, which has only a limited number of labeled samples. However, the successful application of such approaches in a motor imagery BCI remains limited. In this paper, we present a novel framework called domain transfer multiple kernel boosting (DTMKB), which extends the DTMKL algorithms by applying boosting techniques for learning kernel-based classifiers with the transfer of multiple kernels. Based on the proposed framework, we examined their empirical performance in comparison to several state-of-the-art algorithms on two MI task datasets. DTMKB yields the best performance for all datasets and achieves the best average classification accuracy 87.60%, 76.00%, 74.66%, and 74.13%, respectively. In particular, the proposed framework can be applied successfully in a small sample of EEG motor imagery signals.

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Citations
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Motor Task Learning in Brain Computer Interfaces using Time-Dependent Regularized Common Spatial Patterns and Residual Networks

TL;DR: The binary classification results of the proposed method demonstrate a superior performance in classification accuracy compared to other existing methods.
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Disentangled and Side-Aware Unsupervised Domain Adaptation for Cross-Dataset Subjective Tinnitus Diagnosis

TL;DR: This work proposes to achieve Disentangled and Side-aware Unsupervised Domain Adaptation (DSUDA) for cross- dataset tinnitus diagnosis and achieves improvements over competitors regarding comprehensive evalua- tion criteria.
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Distribution Adaptation and Classification Framework Based on Multiple Kernel Learning for Motor Imagery BCI Illiteracy

TL;DR: A distribution adaptation method based on multi-kernel learning to make the distribution of features between the source domain and target domain become even closer to each other, while the divisibility of categories is maximized to address the problem of MI-BCI illiteracy.
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EEG-Based Mental Tasks Recognition via a Deep Learning-Driven Anomaly Detector

TL;DR: In this paper , an unsupervised deep learning-driven scheme for mental tasks recognition using EEG signals was introduced, where the Multichannel Wiener filter was first applied to EEG signals as an artifact removal algorithm to achieve robust recognition.
Proceedings ArticleDOI

Hierarchical Spectral-Temporal Feature Learning for Motor Task Recognition in Brain Computer Interfaces

TL;DR: A novel method for motor imagery brain-computer interface (BCI) EEG signals classi¬fication based on spectral-temporal common spatial patterns feature extraction and deep convolutional neural network is proposed.
References
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