Nestor Adrian, Plaut David C, Behrmann Marlene
Department of Psychology at Scarborough, University of Toronto, Toronto, ON, M1C 1A4, Canada;
Department of Psychology, Carnegie Mellon University, Pittsburgh, PA 15213-3890; Center for the Neural Basis of Cognition, Carnegie Mellon University, Pittsburgh, PA 15213-3890.
Proc Natl Acad Sci U S A. 2016 Jan 12;113(2):416-21. doi: 10.1073/pnas.1514551112. Epub 2015 Dec 28.
The reconstruction of images from neural data can provide a unique window into the content of human perceptual representations. Although recent efforts have established the viability of this enterprise using functional magnetic resonance imaging (MRI) patterns, these efforts have relied on a variety of prespecified image features. Here, we take on the twofold task of deriving features directly from empirical data and of using these features for facial image reconstruction. First, we use a method akin to reverse correlation to derive visual features from functional MRI patterns elicited by a large set of homogeneous face exemplars. Then, we combine these features to reconstruct novel face images from the corresponding neural patterns. This approach allows us to estimate collections of features associated with different cortical areas as well as to successfully match image reconstructions to corresponding face exemplars. Furthermore, we establish the robustness and the utility of this approach by reconstructing images from patterns of behavioral data. From a theoretical perspective, the current results provide key insights into the nature of high-level visual representations, and from a practical perspective, these findings make possible a broad range of image-reconstruction applications via a straightforward methodological approach.
从神经数据重建图像能够为洞察人类感知表征的内容提供一个独特的窗口。尽管近期的研究已通过功能磁共振成像(MRI)模式证实了这项工作的可行性,但这些研究依赖于各种预先设定的图像特征。在此,我们承担了两项任务:一是直接从经验数据中提取特征,二是将这些特征用于面部图像重建。首先,我们采用一种类似于反向相关的方法,从由大量同类面部样本引发的功能MRI模式中提取视觉特征。然后,我们将这些特征组合起来,根据相应的神经模式重建新的面部图像。这种方法使我们能够估计与不同皮层区域相关的特征集合,并成功地将图像重建与相应的面部样本进行匹配。此外,我们通过从行为数据模式重建图像,确立了这种方法的稳健性和实用性。从理论角度来看,当前的结果为深入了解高级视觉表征的本质提供了关键见解;从实际角度来看,这些发现通过一种直接的方法,使广泛的图像重建应用成为可能。