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Mapping fMRI voxel activations to CNN feature space for ease of categorization

机译:将FMRI体素激活映射到CNN特征空间,以便于分类

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We observe the impact of using category averaged feature vectors as intermediaries in predicting object categories from fMRI(Functional Magnetic Resonance Imaging) voxel activations. The validation accuracy of state-of-art prediction methods falls drastically when multiple classes are used at the same time, pointing towards the overlapping nature of representations in the voxel activations. To overcome this disadvantage, we map these overlapping representation to a more separable representation. The equivalent of these representations in the field of Computer Vision is a Convolutional Neural Network(CNN) feature vector. After taking into consideration the structural trade-offs the Ventral Temporal Cortex possesses to achieve efficient categorization, we designed a model whose architecture tries to mimic these functional nuances. There are two parts to the implementation - Estimation of feature vectors and efficient category prediction from the estimated feature vectors. We inspected the perceptual similarity of the estimated feature vectors by the use of Annoy tree. We found that Deep ReLU-MLP(Rectified Linear Unit-Multilayer Perceptron) performs better at decoding fMRI voxel activations compared to Sparse Linear Regressor. While inspecting the perceptual neighborhood of the decoded feature vector, we found a significantly higher percentage of the feature vectors predicted from visual perception experiments mapped to the correct neighborhood than in the case of visual imagery experiment.
机译:我们在预测FMRI(功能磁共振成像)体素激活的情况下,观察使用类别平均特征向量作为中间体的影响。当同时使用多个类时,最先进的预测方法的验证精度急剧下降,指向体素激活中的表示的重叠性质。为了克服这个缺点,我们将这些重叠表示映射到更可分离的表示。相当于计算机视野领域的这些表示是卷积神经网络(CNN)特征向量。考虑到结构权衡后,腹侧时间皮质具有实现有效分类,我们设计了一种模型,其架构试图模仿这些功能细微差别。实施方式有两部分 - 来自估计特征向量的特征向量和有效类别预测的估计。我们通过使用骚动树检查了估计特征向量的感知相似性。与稀疏线性回归相比,我们发现深度Relu-MLP(整流线性单元 - 多层Perceptron)在解码FMRI体素激活时更好地执行。在检查解码特征向量的感知邻域的同时,我们发现从映射到正确邻域的视觉感知实验预测的特征向量的明显高度百分比,而不是在视觉图像实验的情况下。

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