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Open AccessJournal ArticleDOI

SSVEP Enhancement Using Moving Average Filter Controlled by Phase Features

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TLDR
This study proposed a new prepossessing approach to increase the robustness of a steady-state visual evoked potential (SSVEP) based BCI by localizing the intervals which can obscure the SSVEP frequencies by a new algorithm founded on the processing and the analysis of the instantaneous phase.
Abstract
Brain-computer interface (BCI) systems translate the human neurophysiological activities into commands through EEG analysis. Improving the BCI performances leads to faster and easier use and less fatigue. In this study, we proposed a new prepossessing approach to increase the robustness of a steady-state visual evoked potential (SSVEP) based BCI. Inspiring from the known properties of the SSVEP frequency components, the goal was to enhance the signal quality by making it more convenient to be interpreted by the decision-making step. We first investigated the potential to detect the deteriorating periods based on the physiological properties of the SSVEP. The proposed system localizes the intervals which can obscure the SSVEP frequencies by a new algorithm founded on the processing and the analysis of the instantaneous phase. The piecewise linear regression allows a sampler comprehension of the phase signal. Then, these intervals are filtered by the moving average filter to enhance the SSVEP quality. Finally, the decision making is made by the canonical correlation analysis (CCA) algorithm. The results of experiments, using real EEG signals from five subjects, show that the proposed approach significantly increases the performances in terms of accuracy and information transfer rate by about 7.3% and 3.85 bits/min, respectively, in case of 2 s segment length. On the other hand, the spatial filtering methods of the literature weaken the system performances.

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Machine learning methods for predicting progression from mild cognitive impairment to Alzheimer’s disease dementia: a systematic review

TL;DR: In this article, the authors conducted a systematic review following PRISMA guidelines of studies where machine learning was applied to neuroimaging data in order to predict whether patients with mild cognitive impairment might develop Alzheimer's disease dementia or remain stable.
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Towards solving of the Illiteracy phenomenon for VEP-based brain-computer interfaces.

TL;DR: Examination of correlations among BCI performance, personal preferences, and further demographic factors for three different modern visually evoked BCI paradigms finds that handedness, vision correction, BCI experience, etc., have no significant effect on the performance of VEP-based BCI.
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Construction site layout planning and safety management using fuzzy-based bee colony optimization model

TL;DR: A fuzzy-based bee colony optimization (FBCO) algorithm for tuning ρ and τ parameters so as to obtain a feasible and optimal solution to the construction site layout problem by satisfying the multi-objective function.
Book ChapterDOI

Alzheimer's Disease Diagnosis via Deep Factorization Machine Models.

TL;DR: In this paper, the authors proposed a Deep Factorization Machine (DFM) model that combines the ability of DNNs to learn complex relationships and the ease of interpretability of a linear model.
References
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Book

The scientist and engineer's guide to digital signal processing

TL;DR: Getting Started with DSPs 30: Complex Numbers 31: The Complex Fourier Transform 32: The Laplace Transform 33: The z-Transform Chapter 27 Data Compression / JPEG (Transform Compression)
Journal ArticleDOI

Human EEG responses to 1-100 Hz flicker: resonance phenomena in visual cortex and their potential correlation to cognitive phenomena.

TL;DR: An experiment, where ten human subjects were presented flickering light at frequencies from 1 to 100 Hz in 1-Hz steps, and the event-related potentials exhibited steady-state oscillations at all frequencies up to at least 90 Hz, which could be a potential neural basis for gamma oscillations in binding experiments.
Journal ArticleDOI

Frequency Recognition Based on Canonical Correlation Analysis for SSVEP-Based BCIs

TL;DR: A recognition approach is proposed based on the extracted frequency features for an SSVEP-based brain computer interface (BCI) that were higher than those using a widely used fast Fourier transform (FFT)-based spectrum estimation method.
Journal ArticleDOI

EMG and EOG artifacts in brain computer interface systems: A survey

TL;DR: This study reveals weaknesses in BCI studies related to reporting the methods of handling EMG and EOG artifacts and develops automatic methods to handle artifacts or to design BCI systems whose performance is robust to the presence of artifacts.
Journal ArticleDOI

A practical VEP-based brain-computer interface

TL;DR: The development of a practical brain-computer interface at Tsinghua University uses frequency-coded steady-state visual evoked potentials to determine the gaze direction of the user to ensure more universal applicability of the system.
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