Fu Zhongzheng, Zhang Boning, He Xinrun, Li Yixuan, Wang Haoyuan, Huang Jian
School of Artificial Intelligence and Automation, Huazhong University of Science and Technology, Wuhan, China.
Front Neurosci. 2022 Sep 8;16:1000716. doi: 10.3389/fnins.2022.1000716. eCollection 2022.
In emotion recognition based on physiological signals, collecting enough labeled data of a single subject for training is time-consuming and expensive. The physiological signals' individual differences and the inherent noise will significantly affect emotion recognition accuracy. To overcome the difference in subject physiological signals, we propose a joint probability domain adaptation with the bi-projection matrix algorithm (JPDA-BPM). The bi-projection matrix method fully considers the source and target domain's different feature distributions. It can better project the source and target domains into the feature space, thereby increasing the algorithm's performance. We propose a substructure-based joint probability domain adaptation algorithm (SSJPDA) to overcome physiological signals' noise effect. This method can avoid the shortcomings that the domain level matching is too rough and the sample level matching is susceptible to noise. In order to verify the effectiveness of the proposed transfer learning algorithm in emotion recognition based on physiological signals, we verified it on the database for emotion analysis using physiological signals (DEAP dataset). The experimental results show that the average recognition accuracy of the proposed SSJPDA-BPM algorithm in the multimodal fusion physiological data from the DEAP dataset is 63.6 and 64.4% in valence and arousal, respectively. Compared with joint probability domain adaptation (JPDA), the performance of valence and arousal recognition accuracy increased by 17.6 and 13.4%, respectively.
在基于生理信号的情感识别中,为单个受试者收集足够的标注数据用于训练既耗时又昂贵。生理信号的个体差异和固有噪声会显著影响情感识别的准确性。为了克服受试者生理信号的差异,我们提出了一种带有双投影矩阵算法的联合概率域自适应方法(JPDA - BPM)。双投影矩阵方法充分考虑了源域和目标域不同的特征分布。它能够更好地将源域和目标域投影到特征空间,从而提高算法性能。为了克服生理信号的噪声影响,我们提出了一种基于子结构的联合概率域自适应算法(SSJPDA)。该方法能够避免域级匹配过于粗糙以及样本级匹配易受噪声影响的缺点。为了验证所提出的迁移学习算法在基于生理信号的情感识别中的有效性,我们在用于生理信号情感分析的数据库(DEAP数据集)上进行了验证。实验结果表明,所提出的SSJPDA - BPM算法在来自DEAP数据集的多模态融合生理数据中的平均识别准确率,在效价和唤醒度方面分别为63.6%和64.4%。与联合概率域自适应(JPDA)相比,效价和唤醒度识别准确率的性能分别提高了17.6%和13.4%。