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Neural portraits of perception: Reconstructing face images from evoked brain activity

机译:神经知觉肖像:从诱发的大脑活动中重建面部图像

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摘要

Recent neuroimaging advances have allowed visual experience to be reconstructed from patterns of brain activity. While neural reconstructions have ranged in complexity, they have relied almost exclusively on retinotopic mappings between visual input and activity in early visual cortex. However, subjective perceptual information is tied more closely to higher-level cortical regions that have not yet been used as the primary basis for neural reconstructions. Furthermore, no reconstruction studies to date have reported reconstructions of face images, which activate a highly distributed cortical network. Thus, we investigated (a) whether individual face images could be accurately reconstructed from distributed patterns of neural activity, and (b) whether this could be achieved even when excluding activity within occipital cortex. Our approach involved four steps. (1) Principal component analysis (PCA) was used to identify components that efficiently represented a set of training faces. (2) The identified components were then mapped, using a machine learning algorithm, to fMRI activity collected during viewing of the training faces. (3) Based on activity elicited by a new set of test faces, the algorithm predicted associated component scores. (4) Finally, these scores were transformed into reconstructed images. Using both objective and subjective validation measures, we show that our methods yield strikingly accurate neural reconstructions of faces even when excluding occipital cortex. This methodology not only represents a novel and promising approach for investigating face perception, but also suggests avenues for reconstructing ‘offline’ visual experiences—including dreams, memories, and imagination—which are chiefly represented in higher-level cortical areas.
机译:最近的神经影像学进步使得视觉体验可以从大脑活动模式中重建。尽管神经重建的复杂程度各不相同,但它们几乎完全依赖于视觉输入与早期视觉皮层活动之间的视网膜定位。但是,主观知觉信息与尚未被用作神经重建的主要基础的更高层皮质区域紧密相关。此外,迄今为止,还没有重建研究报道过可激活高度分布的皮质网络的面部图像重建。因此,我们调查了(a)是否可以从神经活动的分布式模式中准确地重构出单个面部图像,以及(b)即使排除枕叶皮质内的活动,也可以实现这一目标。我们的方法涉及四个步骤。 (1)主成分分析(PCA)用于识别有效代表一组训练脸部的成分。 (2)然后使用机器学习算法将识别出的组件映射到在查看训练脸部时收集的fMRI活动。 (3)基于一组新的测试面引发的活动,该算法预测了相关的组件评分。 (4)最后,将这些分数转换为重构图像。使用客观和主观的验证措施,我们表明,即使排除枕骨皮质,我们的方法也能产生惊人准确的面部神经重构。这种方法不仅代表了一种新颖且很有前途的面部表情调查方法,而且还提出了重构“离线”视觉体验(包括梦,记忆和想象力)的途径,这些视觉体验主要体现在高层皮质区域。

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  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(94),-1
  • 年度 -1
  • 页码 12–22
  • 总页数 26
  • 原文格式 PDF
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  • 中图分类
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  • 入库时间 2022-08-21 11:19:21

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