The human brain can effectively perform Facial Expression Recognition (FER) with a few samples by utilizing its cognitive ability. However, unlike the human brain, even the well-trained deep neural network is data-dependent and lacks cognitive ability. To tackle this challenge, this paper proposes a novel framework, Brain Machine Generative Adversarial Networks (BM-GAN), which utilizes the concept of brain's cognitive ability to guide a Convolutional Neural Network to generate LIKE-electroencephalograph (EEG) features. More specifically, we firstly obtain EEG signals triggered from facial emotion images, then we adopt BM-GAN to carry out the mutual generation of image visual features and EEG cognitive features. BM-GAN intends to use the cognitive knowledge learnt from EEG signals to instruct the model to perceive LIKE-EEG features. Thereby, BM-GAN has a superior performance for FER like the human brain. The proposed model consists of VisualNet, EEGNet, and BM-GAN. More specifically, VisualNet can obtain image visual features from facial emotion images and EEGNet can obtain EEG cognitive features from EEG signals. Subsequently, the BM-GAN completes the mutual generation of image visual features and EEG cognitive features. Finally, the predicted LIKE-EEG features of test images are used for FER. After learning, without the participation of the EEG signals, an average classification accuracy of 96.6 % is obtained on Chinese Facial Affective Picture System dataset using LIKE-EEG features for FER. Experiments demonstrate that the proposed method can produce an excellent performance for FER.
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http://dx.doi.org/10.1007/s11571-023-09946-y | DOI Listing |
Alzheimers Dement
December 2024
Sorbonne Université, Paris Brain Institute (ICM), INSERM, CNRS, UMR-1127, Mov'It, DreamTeam, Paris, France.
Background: Spectral power of slow rhythms in resting-state EEG increases along Alzheimer's disease (AD) continuum. Besides, recent studies have revealed 1) the importance of analyzing the aperiodic component of an EEG power spectrum and 2) the intrusions of sleep-like slow waves identifiable in wake EEG of animals and young adults. Importantly, the occurrence of these wake slow waves is known i) to increase after sleep deprivation, ii) to be associated with markers of sleepiness, and iii) to predict behavioral errors at different tasks.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
University of Kentucky College of Medicine, Sanders-Brown Center on Aging, Lexington, KY, USA.
Background: We currently lack in the dementia field accurate, noninvasive, quick, and affordable screening tools for brain dysfunctions associated with early subtle risk of mild cognitive impairment (MCI). Our Kentucky aging cohort demonstrates that asymptomatic older individuals with MCI-like frontal memory-related brainwave patterns convert to MCI within a short 5-year period, as opposed to individuals with NC-like patterns (1) that remain normal 10 years later (2). Astrocyte reactivity influences amyloid-β effects on tau pathology in preclinical Alzheimer's disease (3).
View Article and Find Full Text PDFBackground: Existing work suggested that AD pathology can affect the direction and intensity of information signaling in functional brain regions. The present study evaluates the time-delayed effective connectivity of normal controls (NC) and patients with mild cognitive impairment (MCI) under motion-detection tasks and explores identification of possible anomalies and deviated patterns in effective connectivity associated with AD pathology.
Method: Our research focuses on task-based EEG (64-channel), where participants were asked to perform a motion direction discrimination task.
Alzheimers Dement
December 2024
Michigan Alzheimer's Disease Research Center, Ann Arbor, MI, USA.
Background: Patients with cognitive impairment are likely to suffer from weakening of functional connectivity between certain brain regions, which may often be accompanied by increased connectivity between some other regions, the latter of which may reflect the compensatory mechanisms of the brain. In this EEG-based study, we investigate the differences in functional connectivity between persons with normal cognition (NC) and MCI patients in motion detection tasks.
Method: Our research focuses on task-based EEG (64-channel) acquired at Wayne State University, where participants with subjective cognitive complaints were asked to perform a motion direction discrimination task.
Alzheimers Dement
December 2024
Adult Neurodevelopment and Geriatric Psychiatry Division, CAMH, Toronto, ON, Canada.
Background: Previous literature has identified slowing of resting state electroencephalography (EEG) rhythm and abnormal cortical excitation in Alzheimer's Dementia (AD). However, the relationship between these two divergent functional abnormalities and cognitive symptoms of AD are not well understood.
Method: Resting state EEG signal was recorded in participants with AD and HCs for 5 minutes with eyes closed.
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