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DECODING BRAIN COGNITIVE ACTIVITY ACROSS SUBJECTS USING MULTIMODAL M/EEG NEUROIMAGING

机译:使用多峰M / EEG神经模仿解码跨对象的大脑认知活动

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Brain decoding is essential in understanding where and how information is encoded inside the brain. Existing literature has shown that a good classification accuracy is achievable in decoding for single subjects, but multi-subject classification has proven difficult due to the inter-subject variability. In this paper, multi-modal neuroimaging was used to improve two-class multi-subject classification accuracy in a cognitive task of differentiating between a face and a scrambled face. In this transfer learning problem, a feature space based on special-form covariance matrices manipulated with riemannian geometry are used. A supervised two-layer hierarchical model was trained iteratively for estimating classification accuracies. Results are reported on a publically available multi-subject, multi-modal human neuroimaging dataset from MRC Cognition and Brain Sciences Unit, University of Cambridge. The dataset contains simultaneous recordings of electroencephalography (EEG) and magnetoencephalography (MEG). Our model attained, using leave-one-subject-out cross-validation, a classification accuracy of 70.82% for single modal EEG, 81.55% for single modal MEG and 84.98% for multi-modal M/EEG.
机译:大脑解码对于了解在大脑内编码的地点以及信息的位置和方式是必不可少的。现有文献表明,对单个受试者进行解码可实现良好的分类精度,但由于互受对象的可变性,多对象分类已经证明是困难的。在本文中,使用多模态神经影像学用来在脸部和扰脸之间的认知任务中提高两类多对象分类准确性。在该转移学习问题中,使用基于用Riemannian几何形状操作的特殊协方差矩阵的特征空间。迭代地验证监督的双层分层模型,以估计分类精度。结果报道了来自剑桥大学MRC认知和脑科学单位的公开可用的多主题,多莫代尔人类神经影像数据集。数据集包含脑电图(EEG)和磁性脑图(MEG)的同时录制。我们的型号达到了休假 - 一次性交叉验证,单个模态EEG的分类准确度为70.82%,单个模态MEG的81.55%,多模态M / EEG的84.98%。

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