Gaussian mixture models improve fMRI-based image reconstruction

S. Schoenmakers, M. Gerven, T. Heskes
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引用次数: 5

Abstract

New computational models have made it possible to reconstruct perceived images from BOLD responses in visual cortex. We expand a linear Gaussian framework for percept decoding with Gaussian mixture models to better represent the prior distribution of images. In our setup, different mixture components correspond to different letter categories. Our framework not only leads to more accurate reconstructions, but also automatically infers semantic categories from low-level visual areas of the human brain.
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高斯混合模型改进了基于fmri的图像重建
新的计算模型使得从视觉皮层的BOLD反应中重建感知图像成为可能。我们用高斯混合模型扩展了感知解码的线性高斯框架,以更好地表示图像的先验分布。在我们的设置中,不同的混合成分对应不同的字母类别。我们的框架不仅可以带来更准确的重建,而且还可以从人类大脑的低水平视觉区域自动推断出语义类别。
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