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Tensor gradient based discriminative region analysis for cognitive state classification

机译:基于张量梯度的判别区域分析用于认知状态分类

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Extraction of relevant features from high-dimensional multi-way functional MRI (fMRI) data is essential for the classification of a cognitive task. In general, fMRI records a combination of neural activation signals and several other noisy components. Alternatively, fMRI data is represented as a high dimensional array using a number of voxels, time instants, and snapshots. The organisation of fMRI data includes a number of Region Of Interests (ROI), snapshots, and thousand of voxels. The crucial step in cognitive task classification is a reduction of feature size through feature selection. Extraction of a specific pattern of interest within the noisy components is a challenging task. Tensor decomposition techniques have found several applications in the scientific fields. In this paper, a novel tensor gradient-based feature extraction technique for cognitive task classification is proposed. The technique has efficiently been applied on StarPlus fMRI data. Also, the technique has been used to discriminate the ROIs in fMRI data in terms of cognitive state classification. The method has been achieved a better average accuracy when compared to other existing feature extraction methods.
机译:从高维多路功能MRI(fMRI)数据中提取相关特征对于认知任务的分类至关重要。通常,fMRI记录神经激活信号和其他一些噪声成分的组合。或者,使用许多体素,时刻和快照将fMRI数据表示为高维数组。 fMRI数据的组织包括多个关注区域(ROI),快照和数千个体素。认知任务分类中的关键步骤是通过特征选择来减小特征尺寸。在噪声成分中提取特定的感兴趣模式是一项艰巨的任务。张量分解技术已经在科学领域中找到了几种应用。本文提出了一种基于张量梯度的特征提取技术,用于认知任务分类。该技术已有效地应用于StarPlus fMRI数据。而且,该技术已用于根据认知状态分类来区分fMRI数据中的ROI。与其他现有特征提取方法相比,该方法已实现了更好的平均精度。

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