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|Title:||EEG-based attention recognition using machine learning||Authors:||Sun, Haoqi||Keywords:||DRNTU::Engineering::Computer science and engineering||Issue Date:||2017||Source:||Sun, H. (2017). EEG-based attention recognition using machine learning. Doctoral thesis, Nanyang Technological University, Singapore.||Abstract:||Attention is constantly required in many daily life tasks. Attention-related behavior, such as driving distraction, has been reported as a major reason in traffic accidents. Therefore, the recognition of attention can enhance task performance. Electroencephalogram (EEG) is used to study attention, since it provides a direct measure of the brain activity with high temporal resolution at 1-10ms. In this thesis, we study the recognition of selective attention and sustained attention (vigilance) using machine learning. We start by proposing an experiment which aims to recognize unattended and attended conditions induced by Test of Variables of Attention (TOVA), using EEG features supported by the event-related potential (ERP) literature. However, ERP does not work for real-time applications where the external stimuli (event) required by ERP cannot be controlled. In face of the low signal-to-noise ratio (SNR) in the non-ERP approach, we propose Channel Selection with Different Features (CSDF) algorithm, which selects channels with their own different feature sets, as well as restricts features to as few channels as possible. Using CSDF, 83 out of 868 features are selected to distinguish the unattended and attended conditions. The accuracy 94.3% (±5.6%) is the best compared to other feature selection and channel selection algorithms. Based on CSDF, we find that the first and second order difference in the left parietal and temporal lobes, as well as the Higuchi fractal dimension and mean signal amplitude in the right frontal lobe, are relevant to selective attention. Unlike selective attention which has discrete conditions such as attended/unattended, the vigilance stages cannot be easily observed. Analogous to sleep stages, we want to define the vigilance stages in open eye and situation-aware state in a subject-independent and data-driven way. In the literature, there are vigilance stage models defined under closed eye. However, the EEG signals are more complex in open eye and situation-aware state. Extreme learning machine autoencoder (ELMAE) is used to learn the EEG spectral features and define the vigilance stages during simulated driving. Results show that ELMAE is an efficient alternative to restricted Boltzmann machine (RBM) in vigilance recognition: ELMAE achieves root mean square error at 0.189 (±0.049), which is better than RBM at 0.195 (±0.046); and training speed significantly faster than RBM. Based on ELMAE, we define three vigilance stages in open eye and situation-aware state. Stage I is high vigilance, where the subject is attentive. Stage II is low vigilance, which is further divided into Stage II.1: drowsiness and difficulty in attention allocation; and Stage II.2: distraction instead of falling asleep. A possible explanation for stage II.2 is that, the environment contains not enough external stimuli to keep the open eye and situation-aware state, so that the brain performs vigilance regulation to seek external stimuli, and hence leading to distraction. A major limitation of ELMAE is that it learns nonsparse hidden weights and features. Analogous to feature selection using CSDF, we want to learn sparse features so that the useful information is restricted to a few nonzero features to achieve better interpretability. To address this issue, a novel bio-inspired algorithm, joint weight-delay spike-timing dependent plasticity (joint STDP), is proposed for learning sparse hidden weights and EEG spectral features. Compared to other nonsparse and sparse algorithms, joint STDP achieves the highest level of sparseness in both learned features and hidden weights significantly. On the other hand, joint STDP has slightly larger root mean square error at 0.206 (±0.061), due to the trade-off between performance and sparseness. Extensive experiments and comparisons are carried out to evaluate all the proposed algorithms. The experimental results confirm the advantages of the proposed algorithms, hence making contribution to EEG-based attention research. This thesis is interdisciplinary and includes several fields such as machine learning, computational neuroscience, brain-computer interface and psychology.||URI:||http://hdl.handle.net/10356/71740||DOI:||10.32657/10356/71740||Fulltext Permission:||open||Fulltext Availability:||With Fulltext|
|Appears in Collections:||IGS Theses|
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Updated on May 13, 2021
Updated on May 13, 2021
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