优化节点级胶囊图神经网络在脑电信号中独立于主体的情感识别。

IF 1.5 4区 生物学 Q3 BIOLOGY
G Kiruthiga, Ashwinth Janarthanan, P D Mahendhiran
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引用次数: 0

摘要

由于包含各种情绪的标记脑电图数据集的稀缺性,使用振动模式分解和深度学习的脑电图(EEG)进行主体独立情绪检测成为可能。从广泛和不同的人群中收集广泛的情绪状态的标记脑电图数据是具有挑战性和资源密集型的。因此,在小型或有偏差的数据集上训练的模型可能无法很好地推广到未知的个体或情绪状态,从而导致现实应用中的准确性和鲁棒性降低。然后使用节点级胶囊图神经网络(NCGNN)根据收集到的特征正确识别平静、快乐、悲伤和愤怒等情绪。一般来说,NCGNN分类器没有提供优化技术来调整参数以确保精确的情绪识别。因此,提出利用食人鱼觅食优化算法(PFOA)增强节点级胶囊图神经网络,准确分类情绪水平。然后,在Python中排除所提出的NLCGNN-SIER-EEG以及召回率(Recall)、准确率(Accuracy)、精度(Precision)、特异性(Specificity)、F1评分(F1 score)和RoC等性能指标。实验结果表明,NLCGNN-SIER-EEG技术与现有的基于脑电数据的基于VMD和深度学习的独立主体情感识别(SIER-EEG-VMD-DL)、基于深度卷积神经网络模型两级集成的情感识别系统(ers -le - dcnn)相比,准确率分别提高19.57%、24.37%和34.15%,精密度分别提高22.12%、26.82%和28.52%,召回率分别提高23.26%、28.17%和29.43%。基于脑电数据的人类情绪识别,分别采用主成分分析和人工神经网络(EEH-HER-ANN)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized node-level capsule graph neural network for subject-independent emotion recognition from EEG signals.

Subject-independent emotion detection using EEG (Electroencephalography) using Vibrational Mode Decomposition and deep learning is made possible by the scarcity of labelled EEG datasets encompassing a variety of emotions. Labelled EEG data collection over a wide range of emotional states from a broad and varied population is challenging and resource-intensive. As a result, models trained on small or biased datasets may fail to generalize well to unknown individuals or emotional states, resulting in lower accuracy and robustness in real-world applications. A Node-Level Capsule Graph Neural Network (NCGNN) is then used to correctly recognize emotions like calm, happy, sad, and furious based on the features that have been collected. Generally speaking, the NCGNN classifier does not provide optimization techniques for adjusting parameters to ensure precise emotion recognition. Hence, propose to utilize the Piranha Foraging Optimization Algorithm (PFOA) to enhance Node-Level Capsule Graph Neural Network, accurately categorize the emotion level. Then, the proposed NLCGNN-SIER-EEG is excluded in Python and the performance metrics like Recall, Accuracy, Precision, Specificity, F1 score and RoC. In the end, the performance of NLCGNN-SIER-EEG technique provides 19.57%, 24.37% and 34.15% high accuracy, 22.12%, 26.82% and 28.52% higher Precision and 23.26%, 28.17% and 29.43% higher recall while compared with existing like Subject-independent emotion recognition based on EEG data using VMD and deep learning (SIER-EEG-VMD-DL), Emotion recognition system based on two-level ensemble of deep-convolutional neural network models (ERS-TLE-DCNN), and human emotion recognition based on EEG data using principal component analysis and artificial neural networks (EEH-HER-ANN), respectively.

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来源期刊
CiteScore
3.60
自引率
11.80%
发文量
33
审稿时长
>12 weeks
期刊介绍: Aims & Scope: Electromagnetic Biology and Medicine, publishes peer-reviewed research articles on the biological effects and medical applications of non-ionizing electromagnetic fields (from extremely-low frequency to radiofrequency). Topic examples include in vitro and in vivo studies, epidemiological investigation, mechanism and mode of interaction between non-ionizing electromagnetic fields and biological systems. In addition to publishing original articles, the journal also publishes meeting summaries and reports, and reviews on selected topics.
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