Robust multi-frequency band joint dictionary learning with low-rank representation

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Huafeng Ding, Junyan Shang, Guohua Zhou
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Abstract

Emotional state recognition is an important part of emotional research. Compared to non-physiological signals, the electroencephalogram (EEG) signals can truly and objectively reflect a person’s emotional state. To explore the multi-frequency band emotional information and address the noise problemof EEG signals, this paper proposes a robust multi-frequency band joint dictionary learning with low-rank representation (RMBDLL). Based on the dictionary learning, the technologies of sparse and low-rank representation are jointly integrated to reveal the intrinsic connections and discriminative information of EEG multi-frequency band. RMBDLL consists of robust dictionary learning and intra-class/inter-class local constraint learning. In robust dictionary learning part, RMBDLL separates complex noise in EEG signals and establishes clean sub-dictionaries on each frequency band to improve the robustness of the model. In this case, different frequency data obtains the same encoding coefficients according to the consistency of emotional state recognition. In intra-class/inter-class local constraint learning part, RMBDLL introduces a regularization term composed of intra-class and inter-class local constraints, which are constructed from the local structural information of dictionary atoms, resulting in intra-class similarity and inter-class difference of EEG multi-frequency bands. The effectiveness of RMBDLL is verified on the SEED dataset with different noises. The experimental results show that the RMBDLL algorithm can maintain the discriminative local structure in the training samples and achieve good recognition performance on noisy EEG emotion datasets.
利用低秩表示进行稳健的多频带联合字典学习
情绪状态识别是情绪研究的重要组成部分。与非生理信号相比,脑电图(EEG)信号能真实客观地反映人的情绪状态。为了探索多频段情绪信息并解决脑电信号的噪声问题,本文提出了一种鲁棒多频段低秩表示联合词典学习(RMBDLL)。在字典学习的基础上,将稀疏表示和低秩表示技术相结合,以揭示脑电图多频段的内在联系和鉴别信息。RMBDLL 包括鲁棒字典学习和类内/类间局部约束学习。在鲁棒字典学习部分,RMBDLL 分离脑电信号中的复杂噪声,并在每个频段上建立干净的子字典,以提高模型的鲁棒性。在这种情况下,不同频率的数据会根据情绪状态识别的一致性获得相同的编码系数。在类内/类间局部约束学习部分,RMBDLL 引入了由类内和类间局部约束组成的正则化项,这些局部约束由字典原子的局部结构信息构建而成,从而得到脑电多频段的类内相似性和类间差异。在具有不同噪声的 SEED 数据集上验证了 RMBDLL 的有效性。实验结果表明,RMBDLL 算法能在训练样本中保持局部结构的区分性,并在有噪声的脑电情绪数据集上取得良好的识别性能。
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来源期刊
Journal of Intelligent & Fuzzy Systems
Journal of Intelligent & Fuzzy Systems 工程技术-计算机:人工智能
CiteScore
3.40
自引率
10.00%
发文量
965
审稿时长
5.1 months
期刊介绍: The purpose of the Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology is to foster advancements of knowledge and help disseminate results concerning recent applications and case studies in the areas of fuzzy logic, intelligent systems, and web-based applications among working professionals and professionals in education and research, covering a broad cross-section of technical disciplines.
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