Model-agnostic meta-learning for EEG-based inter-subject emotion recognition.

Cheng Chen, Hao Fang, Yuxiao Yang, Yi Zhou
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Abstract

Objective. Developing an efficient and generalizable method for inter-subject emotion recognition from neural signals is an emerging and challenging problem in affective computing. In particular, human subjects usually have heterogeneous neural signal characteristics and variable emotional activities that challenge the existing recognition algorithms from achieving high inter-subject emotion recognition accuracy.Approach. In this work, we propose a model-agnostic meta-learning algorithm to learn an adaptable and generalizable electroencephalogram-based emotion decoder at the subject's population level. Different from many prior end-to-end emotion recognition algorithms, our learning algorithms include a pre-training step and an adaptation step. Specifically, our meta-decoder first learns on diverse known subjects and then further adapts it to unknown subjects with one-shot adaptation. More importantly, our algorithm is compatible with a variety of mainstream machine learning decoders for emotion recognition.Main results. We evaluate the adapted decoders obtained by our proposed algorithm on three Emotion-EEG datasets: SEED, DEAP, and DREAMER. Our comprehensive experimental results show that the adapted meta-emotion decoder achieves state-of-the-art inter-subject emotion recognition accuracy and outperforms the classical supervised learning baseline across different decoder architectures.Significance. Our results hold promise to incorporate the proposed meta-learning emotion recognition algorithm to effectively improve the inter-subject generalizability in designing future affective brain-computer interfaces.

基于脑电图的主体间情绪识别的模型不可知元学习。
目的:从神经信号中开发一种高效且可推广的跨主体情感识别方法是情感计算领域的一个新兴且具有挑战性的问题。特别是,人类受试者通常具有异质的神经信号特征和多变的情绪活动,这对现有识别算法实现高主体间情绪识别精度提出了挑战。& # xD;方法。在这项工作中,我们提出了一种模型不可知的元学习算法,以在受试者群体水平上学习适应性强且可推广的基于脑电图(EEG)的情绪解码器。与之前的许多端到端情绪识别算法不同,我们的学习算法包括预训练步骤和自适应步骤。具体来说,我们的元解码器首先学习不同的已知主题,然后通过一次适应进一步适应未知主题。更重要的是,我们的算法兼容多种主流的情绪识别机器学习解码器。 ;主要结果 ;我们在三个情绪-脑电图数据集:SEED, DEAP和dream上评估了我们提出的算法获得的适应性解码器。综合实验结果表明,自适应元情绪解码器实现了最先进的主体间情绪识别精度,并且在不同解码器架构中优于经典的监督学习基线。& # xD;意义。我们的研究结果有望将所提出的元学习情绪识别算法纳入设计未来情感脑机接口(bci)时,有效提高学科间的可泛化性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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