Towards Personalized Brain-Computer Interface Application Based on Endogenous EEG Paradigms
- URL: http://arxiv.org/abs/2411.11302v1
- Date: Mon, 18 Nov 2024 05:58:41 GMT
- Title: Towards Personalized Brain-Computer Interface Application Based on Endogenous EEG Paradigms
- Authors: Heon-Gyu Kwak, Gi-Hwan Shin, Yeon-Woo Choi, Dong-Hoon Lee, Yoo-In Jeon, Jun-Su Kang, Seong-Whan Lee,
- Abstract summary: We propose a conceptual framework for personalized brain-computer interface (BCI) applications.
The framework includes two essential components: user identification and intention classification.
EEG signals can effectively support personalized BCI applications, offering robust identification and reliable intention decoding.
- Score: 22.625590048865387
- License:
- Abstract: In this paper, we propose a conceptual framework for personalized brain-computer interface (BCI) applications, which can offer an enhanced user experience by customizing services to individual preferences and needs, based on endogenous electroencephalography (EEG) paradigms including motor imagery (MI), speech imagery (SI), and visual imagery. The framework includes two essential components: user identification and intention classification, which enable personalized services by identifying individual users and recognizing their intended actions through EEG signals. We validate the feasibility of our framework using a private EEG dataset collected from eight subjects, employing the ShallowConvNet architecture to decode EEG features. The experimental results demonstrate that user identification achieved an average classification accuracy of 0.995, while intention classification achieved 0.47 accuracy across all paradigms, with MI demonstrating the best performance. These findings indicate that EEG signals can effectively support personalized BCI applications, offering robust identification and reliable intention decoding, especially for MI and SI.
Related papers
- Support Vector Machine for Person Classification Using the EEG Signals [0.4419843514606336]
We propose using Electroencephalogram (EEG) signals for individual identification to address this challenge.
EEG signals offer promising authentication potential and provide a novel means for liveness detection, thereby mitigating spoofing attacks.
This study employs a public dataset initially compiled for fatigue analysis, featuring EEG data from 12 subjects recorded via an eight-channel OpenBCI helmet.
arXiv Detail & Related papers (2024-11-26T14:03:58Z) - When Does Your Brain Know You? Segment Length and Its Impact on EEG-based Biometric Authentication Accuracy [3.9735602856280132]
The research seeks to pinpoint a threshold where EEG data provides maximum informational yield for authentication purposes.
The findings are set to advance the field of non-invasive biometric technologies.
arXiv Detail & Related papers (2024-03-19T11:30:03Z) - Faceptor: A Generalist Model for Face Perception [52.8066001012464]
Faceptor is proposed to adopt a well-designed single-encoder dual-decoder architecture.
Layer-Attention into Faceptor enables the model to adaptively select features from optimal layers to perform the desired tasks.
Our training framework can also be applied to auxiliary supervised learning, significantly improving performance in data-sparse tasks such as age estimation and expression recognition.
arXiv Detail & Related papers (2024-03-14T15:42:31Z) - DGSD: Dynamical Graph Self-Distillation for EEG-Based Auditory Spatial
Attention Detection [49.196182908826565]
Auditory Attention Detection (AAD) aims to detect target speaker from brain signals in a multi-speaker environment.
Current approaches primarily rely on traditional convolutional neural network designed for processing Euclidean data like images.
This paper proposes a dynamical graph self-distillation (DGSD) approach for AAD, which does not require speech stimuli as input.
arXiv Detail & Related papers (2023-09-07T13:43:46Z) - Multi-Modal Human Authentication Using Silhouettes, Gait and RGB [59.46083527510924]
Whole-body-based human authentication is a promising approach for remote biometrics scenarios.
We propose Dual-Modal Ensemble (DME), which combines both RGB and silhouette data to achieve more robust performances for indoor and outdoor whole-body based recognition.
Within DME, we propose GaitPattern, which is inspired by the double helical gait pattern used in traditional gait analysis.
arXiv Detail & Related papers (2022-10-08T15:17:32Z) - EEG-Inception: An Accurate and Robust End-to-End Neural Network for
EEG-based Motor Imagery Classification [123.93460670568554]
This paper proposes a novel convolutional neural network (CNN) architecture for accurate and robust EEG-based motor imagery (MI) classification.
The proposed CNN model, namely EEG-Inception, is built on the backbone of the Inception-Time network.
The proposed network is an end-to-end classification, as it takes the raw EEG signals as the input and does not require complex EEG signal-preprocessing.
arXiv Detail & Related papers (2021-01-24T19:03:10Z) - EEGsig: an open-source machine learning-based toolbox for EEG signal
processing [0.9635229697369337]
In this paper, we demonstrate a toolbox and graphic user interface, EEGsig, for the full process of EEG signals.
We have aggregated all three EEG signal processing steps, including preprocessing, feature extraction, and classification into EEGsig.
For selecting the best feature extracted, all EEG signal channels can be visible simultaneously.
arXiv Detail & Related papers (2020-10-24T11:18:33Z) - Disguising Personal Identity Information in EEG Signals [6.9207437122916735]
We propose an approach to disguise the identity information in EEG signals with dummy identities.
The identity information in original EEGs are transformed into disguised ones with a CycleGANbased EEG disguising model.
With the constraints added to the model, the features of interest in EEG signals can be preserved.
arXiv Detail & Related papers (2020-10-18T03:55:38Z) - User-Guided Domain Adaptation for Rapid Annotation from User
Interactions: A Study on Pathological Liver Segmentation [49.96706092808873]
Mask-based annotation of medical images, especially for 3D data, is a bottleneck in developing reliable machine learning models.
We propose the user-guided domain adaptation (UGDA) framework, which uses prediction-based adversarial domain adaptation (PADA) to model the combined distribution of UIs and mask predictions.
We show UGDA can retain this state-of-the-art performance even when only seeing a fraction of available UIs.
arXiv Detail & Related papers (2020-09-05T04:24:58Z) - Mining Implicit Entity Preference from User-Item Interaction Data for
Knowledge Graph Completion via Adversarial Learning [82.46332224556257]
We propose a novel adversarial learning approach by leveraging user interaction data for the Knowledge Graph Completion task.
Our generator is isolated from user interaction data, and serves to improve the performance of the discriminator.
To discover implicit entity preference of users, we design an elaborate collaborative learning algorithms based on graph neural networks.
arXiv Detail & Related papers (2020-03-28T05:47:33Z) - Motor Imagery Classification of Single-Arm Tasks Using Convolutional
Neural Network based on Feature Refining [5.620334754517149]
Motor imagery (MI) is commonly used for recovery or rehabilitation of motor functions due to its signal origin.
In this study, we proposed a band-power feature refining convolutional neural network (BFR-CNN) to achieve high classification accuracy.
arXiv Detail & Related papers (2020-02-04T04:36:09Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.