首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >DECODING VISUAL COVERT SELECTIVE SPATIAL ATTENTION BASED ON MAGNETOENCEPHALOGRAPHY SIGNALS
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DECODING VISUAL COVERT SELECTIVE SPATIAL ATTENTION BASED ON MAGNETOENCEPHALOGRAPHY SIGNALS

机译:基于磁性脑置信号解码视觉隐蔽选择性空间关注

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摘要

This paper proposes a hybrid approach for inferring the target of visual covert selective spatial attention (VCSSA) from magnetoencephalography (MEG) signals. The MEG signal offers a higher spatial resolution and a lower distortion as compared with their competing brain signaling techniques, such as the electroencephalography signal. The proposed approach consists of removing global redundant patterns of MEG channels by surface Laplacian, feature extraction by Hurst exponent (H), 6th order Morlet coefficients (MCs), and Petrosian fractal dimension (PFD), standardization, feature ranking by statistical analysis, and classification by support vector machines (SVM). The results indicate that the combined use of the above elements can effectively decipher the cognitive process of VCSSA. In particular, using four-fold cross-validation, the proposed approach robustly predicts the location of the attended stimulus with an accuracy of up to 92.41% for distinguishing left from right. The results show that the fusion among wavelet coefficients and non-linear features is more robust than in other previous studies. The results also indicate that the VCSSA involves widespread functional brain activities, affecting more regions than temporal and parietal circuits. Finally, the comparison of the results with six other competing strategies indicates that a slightly higher average accuracy is obtained by the proposed approach on the same data.
机译:本文提出了一种混合方法,用于从磁性脑图(MEG)信号中推断出视觉覆盖选择性空间注意(VCSSA)的目标。与诸如脑电图信号的竞争脑信号传导技术相比,MEG信号提供更高的空间分辨率和较低的失真。所提出的方法包括通过表面Laplacian去除全球冗余模式,由赫斯特指数(H),第6阶Morlet系数(MCS),标准化,标准化,通过统计分析排名,标准化,标准化,通过统计分析来删除全球冗余模式支持向量机(SVM)进行分类。结果表明,上述元素的结合使用可以有效地破译VCSSA的认知过程。特别地,使用四倍的交叉验证,所提出的方法强大地预测了参与刺激的位置,精度高达92.41%,以区分左右。结果表明,小波系数和非线性特征之间的融合比其他先前的研究更鲁棒。结果还表明,VCSSA涉及广泛的功能性大脑活动,影响比时间和台型电路更多的区域。最后,使用六种其他竞争策略的结果的比较表明,通过相同数据的提出方法获得了稍高的平均精度。

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