Li Junnan, Li Jiang, Wang Xiaoping, Zhan Xin, Zeng Zhigang
School of Artificial Intelligence and Automation, Huazhong University of Science and Technology, Wuhan 430074, China.
Hubei Key Laboratory of Brain-inspired Intelligent Systems, Huazhong University of Science and Technology, Wuhan 430074, China.
Cyborg Bionic Syst. 2024 Feb 5;5:0074. doi: 10.34133/cbsystems.0074. eCollection 2024.
Emotion recognition from physiological signals (ERPS) has drawn tremendous attention and can be potentially applied to numerous fields. Since physiological signals are nonstationary time series with high sampling frequency, it is challenging to directly extract features from them. Additionally, there are 2 major challenges in ERPS: (a) how to adequately capture the correlations between physiological signals at different times and between different types of physiological signals and (b) how to effectively minimize the negative effect caused by temporal covariate shift (TCS). To tackle these problems, we propose a domain generalization and residual network-based approach for emotion recognition from physiological signals (DGR-ERPS). We first pre-extract time- and frequency-domain features from the original time series to compose a new time series. Then, in order to fully extract the correlation information of different physiological signals, these time series are converted into 3D image data to serve as input for a residual-based feature encoder (RBFE). In addition, we introduce a domain generalization-based technique to mitigate the issue posed by TCS. We have conducted extensive experiments on 2 real-world datasets, and the results indicate that our DGR-ERPS achieves superior performance under both TCS and non-TCS scenarios.
基于生理信号的情感识别(ERPS)已引起了极大关注,并有可能应用于众多领域。由于生理信号是具有高采样频率的非平稳时间序列,直接从它们中提取特征具有挑战性。此外,ERPS存在两个主要挑战:(a)如何充分捕捉不同时间的生理信号之间以及不同类型生理信号之间的相关性;(b)如何有效最小化由时间协变量偏移(TCS)引起的负面影响。为了解决这些问题,我们提出了一种基于域泛化和残差网络的生理信号情感识别方法(DGR-ERPS)。我们首先从原始时间序列中预提取时域和频域特征以组成一个新的时间序列。然后,为了充分提取不同生理信号的相关信息,将这些时间序列转换为3D图像数据,作为基于残差的特征编码器(RBFE)的输入。此外,我们引入了一种基于域泛化的技术来减轻TCS带来的问题。我们在两个真实世界数据集上进行了广泛实验,结果表明我们的DGR-ERPS在TCS和非TCS场景下均取得了优异性能。