CAGCNet: generalized contrastive learning for person identification based on channel aggregated EEG features.

IF 3.9 3区 工程技术 Q2 NEUROSCIENCES
Cognitive Neurodynamics Pub Date : 2025-12-01 Epub Date: 2025-09-01 DOI:10.1007/s11571-025-10325-y
Xinran Wang, Xuanyu Jin, Wanzeng Kong, Fabio Babiloni
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引用次数: 0

Abstract

Person identification method based on electroencephalograms (EEG) signals, or so called brainprint recognition is a novel way to distinguish identities with advantages of high security. However, existing methods neglect the distribution difference between training and test data, and the large distance between projected features in the latent space makes the performance of the model degrade in the unseen domain data. In this paper, we propose channel aggregated based generalized contrastive learning framework, which combines multiple modules to overcome this challenge. To capture features from different granularities, we involve multi-scale convolution with channel attention block. In face of distribution of unseen domain, we introduce feature enhancement-based generalized contrast learning to improve the model generalization ability. In the generalized contrast learning module, taking the difficulty of reconstructing EEG signals into consideration, we augment the source domain data at the feature level to improve the generalization ability of the model on the unseen domain data. Extensive experiments on two multi-session datasets shows that our model outperformed other baseline methods, demonstrating its capability of better generalization performance to unseen domain.

CAGCNet:基于通道聚合脑电特征的广义对比学习人脸识别。
基于脑电图(EEG)信号的身份识别方法,即脑印识别,是一种新的身份识别方法,具有安全性高的优点。然而,现有的方法忽略了训练数据和测试数据之间的分布差异,并且潜在空间中投影特征之间的距离较大,使得模型在未知领域数据中的性能下降。在本文中,我们提出了基于通道聚合的广义对比学习框架,该框架结合了多个模块来克服这一挑战。为了捕获不同粒度的特征,我们采用了带通道注意块的多尺度卷积。针对不可见域的分布,引入基于特征增强的广义对比学习,提高模型泛化能力。在广义对比学习模块中,考虑到脑电信号重构的难度,在特征层面对源域数据进行增强,提高模型对未知域数据的泛化能力。在两个多会话数据集上的大量实验表明,我们的模型优于其他基线方法,证明了它对未知领域具有更好的泛化性能。
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来源期刊
Cognitive Neurodynamics
Cognitive Neurodynamics 医学-神经科学
CiteScore
6.90
自引率
18.90%
发文量
140
审稿时长
12 months
期刊介绍: Cognitive Neurodynamics provides a unique forum of communication and cooperation for scientists and engineers working in the field of cognitive neurodynamics, intelligent science and applications, bridging the gap between theory and application, without any preference for pure theoretical, experimental or computational models. The emphasis is to publish original models of cognitive neurodynamics, novel computational theories and experimental results. In particular, intelligent science inspired by cognitive neuroscience and neurodynamics is also very welcome. The scope of Cognitive Neurodynamics covers cognitive neuroscience, neural computation based on dynamics, computer science, intelligent science as well as their interdisciplinary applications in the natural and engineering sciences. Papers that are appropriate for non-specialist readers are encouraged. 1. There is no page limit for manuscripts submitted to Cognitive Neurodynamics. Research papers should clearly represent an important advance of especially broad interest to researchers and technologists in neuroscience, biophysics, BCI, neural computer and intelligent robotics. 2. Cognitive Neurodynamics also welcomes brief communications: short papers reporting results that are of genuinely broad interest but that for one reason and another do not make a sufficiently complete story to justify a full article publication. Brief Communications should consist of approximately four manuscript pages. 3. Cognitive Neurodynamics publishes review articles in which a specific field is reviewed through an exhaustive literature survey. There are no restrictions on the number of pages. Review articles are usually invited, but submitted reviews will also be considered.
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