Among the different modalities to assess emotion, electroencephalogram (EEG), representing the electrical brain activity, achieved motivating results over the last decade. Emotion estimation from EEG could help in the diagnosis or rehabilitation of certain diseases. In this paper, we propose a dual model considering two different representations of EEG feature maps: 1) a sequential based representation of EEG band power, 2) an image-based representation of the feature vectors. We also propose an innovative method to combine the information based on a saliency analysis of the image-based model to promote joint learning of both model parts. The model has been evaluated on four publicly available datasets and achieves similar results to the state-of-the-art approaches. It outperforms results for two of the proposed datasets with a lower standard deviation that reflects higher stability. For sake of reproducibility, the codes and models proposed in this paper are available at https://github.com/VDelv/Emotion-EEG.
翻译:在评估情感的不同模式中,电子脑图(EEG)代表了电子脑活动,在过去十年中取得了激励效果。EEG的情感估计有助于诊断或恢复某些疾病。在本文件中,我们提出了一个双重模式,考虑两种不同形式的EEG地貌图:1)基于顺序的EEG带力代表,2)基于图像的特性矢量代表。我们还提出了一个创新方法,将基于基于图像模型的显著分析的信息结合起来,以促进对两个模型进行联合学习。该模型已经对四个公开的数据集进行了评估,并取得了与最新方法相似的结果。它优于两个低标准偏差、反映更高稳定性的拟议数据集的结果。为重现起见,本文中提议的代码和模型可在https://github.com/VDelv/Emove-EEEEGEG中查阅。