Center for the Neural Basis of Cognition, Carnegie Mellon University, Pittsburgh, Pennsylvania; Department of Psychology, Carnegie Mellon University, Pittsburgh, Pennsylvania.
Hum Brain Mapp. 2013 Nov;34(11):3101-15. doi: 10.1002/hbm.22128. Epub 2012 Jun 19.
What basic visual structures underlie human face detection and how can we extract such structures directly from the amplitude of neural responses elicited by face processing? Here, we address these issues by investigating an extension of noise-based image classification to BOLD responses recorded in high-level visual areas. First, we assess the applicability of this classification method to such data and, second, we explore its results in connection with the neural processing of faces. To this end, we construct luminance templates from white noise fields based on the response of face-selective areas in the human ventral cortex. Using behaviorally and neurally-derived classification images, our results reveal a family of simple but robust image structures subserving face representation and detection. Thus, we confirm the role played by classical face selective regions in face detection and we help clarify the representational basis of this perceptual function. From a theory standpoint, our findings support the idea of simple but highly diagnostic neurally-coded features for face detection. At the same time, from a methodological perspective, our work demonstrates the ability of noise-based image classification in conjunction with fMRI to help uncover the structure of high-level perceptual representations.
什么是人类面孔检测的基本视觉结构,我们如何直接从面孔处理引起的神经反应的幅度中提取这些结构?在这里,我们通过研究基于噪声的图像分类方法对高级视觉区域记录的 BOLD 反应的扩展来解决这些问题。首先,我们评估这种分类方法在这种数据中的适用性,其次,我们探索它与面孔神经处理的关系。为此,我们根据人类腹侧皮层中选择性区域的反应,从白噪声场中构建亮度模板。使用行为和神经衍生的分类图像,我们的结果揭示了一系列简单但强大的图像结构,用于支持面孔的表示和检测。因此,我们证实了经典的选择性区域在面孔检测中的作用,并帮助澄清了这种感知功能的表示基础。从理论角度来看,我们的发现支持了用于面孔检测的简单但高度诊断性神经编码特征的想法。同时,从方法学的角度来看,我们的工作证明了基于噪声的图像分类与 fMRI 相结合的能力,可以帮助揭示高级感知表示的结构。