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Multi-method Fusion of Cross-Subject Emotion Recognition Based on High-Dimensional EEG Features

机译:基于高维脑电特征的跨学科情感识别的多方法融合

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摘要

Emotion recognition using electroencephalogram (EEG) signals has attracted significant research attention. However, it is difficult to improve the emotional recognition effect across subjects. In response to this difficulty, in this study, multiple features were extracted for the formation of high-dimensional features. Based on the high-dimensional features, an effective method for cross-subject emotion recognition was then developed, which integrated the significance test/sequential backward selection and the support vector machine (ST-SBSSVM). The effectiveness of the ST-SBSSVM was validated on a dataset for emotion analysis using physiological signals (DEAP) and the SJTU Emotion EEG Dataset (SEED). With respect to high-dimensional features, the ST-SBSSVM average improved the accuracy of cross-subject emotion recognition by 12.4% on the DEAP and 26.5% on the SEED when compared with common emotion recognition methods. The recognition accuracy obtained using ST-SBSSVM was as high as that obtained using sequential backward selection (SBS) on the DEAP dataset. However, on the SEED dataset, the recognition accuracy increased by ~6% using ST-SBSSVM from that using the SBS. Using the ST-SBSSVM, ~97% (DEAP) and 91% (SEED) of the program runtime was eliminated when compared with the SBS. Compared with recent similar works, the method developed in this study for emotion recognition across all subjects was found to be effective, and its accuracy was 72% (DEAP) and 89% (SEED).
机译:使用脑电图(EEG)信号进行情感识别已引起了广泛的研究关注。然而,很难改善跨对象的情感识别效果。针对这一困难,在本研究中,提取了多个特征以形成高维特征。基于高维特征,开发了一种有效的跨主题情感识别方法,该方法将重要性测试/顺序向后选择与支持向量机(ST-SBSSVM)相集成。 ST-SBSSVM的有效性已在使用生理信号(DEAP)和SJTU EEE脑电数据集(SEED)进行情感分析的数据集上得到验证。关于高维特征,与常规的情感识别方法相比,ST-SBSSVM平均将DEAP上的跨主题情感识别的准确性提高了12.4%,将SEED上的跨学科情感识别的准确性提高了26.5%。使用ST-SBSSVM获得的识别精度与使用DEAP数据集上的顺序向后选择(SBS)获得的识别精度一样高。但是,在SEED数据集上,使用ST-SBSSVM的识别精度比使用SBS的识别精度提高了约6%。与SBS相比,使用ST-SBSSVM可以节省约97%(DEAP)和91%(SEED)的程序运行时间。与最近的类似作品相比,该研究中开发的用于所有对象的情感识别的方法被认为是有效的,其准确性分别为72%(DEAP)和89%(SEED)。

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