Dynamic representation of multidimensional object properties in the human brain.

Lina Teichmann, Martin N Hebart, Chris I Baker
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Abstract

Our visual world consists of an immense number of unique objects and yet, we are easily able to identify, distinguish, interact, and reason about the things we see within a few hundred milliseconds. This requires that we integrate and focus on a wide array of object properties to support diverse behavioral goals. In the current study, we used a large-scale and comprehensively sampled stimulus set and developed an analysis approach to determine if we could capture how rich, multidimensional object representations unfold over time in the human brain. We modelled time-resolved MEG signals evoked by viewing single presentations of tens of thousands of object images based on millions of behavioral judgments. Extracting behavior-derived object dimensions from similarity judgments, we developed a data-driven approach to guide our understanding of the neural representation of the object space and found that every dimension is reflected in the neural signal. Studying the temporal profiles for different object dimensions we found that the time courses fell into two broad types, with either a distinct and early peak (∼125 ms) or a slow rise to a late peak (∼300 ms). Further, early effects were stable across participants, in contrast to later effects which showed more variability, suggesting that early peaks may carry stimulus-specific and later peaks more participant-specific information. Dimensions with early peaks appeared to be primarily visual dimensions and those with later peaks more conceptual, suggesting that conceptual representations are more variable across people. Together, these data provide a comprehensive account of how behavior-derived object properties unfold in the human brain and form the basis for the rich nature of object vision.

Abstract Image

Abstract Image

Abstract Image

多维物体的特性在人脑中是动态表示的。
我们的视觉世界由大量独特的物体组成,然而,我们很容易在几百毫秒内识别、区分、互动和推理我们看到的东西。这需要我们灵活地集成和关注不同的对象属性,以支持特定的行为目标。在目前的研究中,我们通过对观察数千个物体所引发的时间分辨脑磁共振信号进行建模,研究了这些丰富的物体表征是如何在人脑中展开的。使用数百万的行为判断来指导我们理解物体空间的神经表示,我们发现了物体维度上不同的时间轮廓。这些剖面分为两大类型,要么是明显的早期峰值(~150ms),要么是缓慢上升到晚期峰值(~300ms)。此外,早期效应在参与者中是稳定的,而后期效应在人群中表现出更多的可变性。这突出表明,早期峰值可能携带刺激特异性信息,而后期峰值可能携带受试者特异性信息。考虑到早期峰值的维度似乎主要是视觉维度,而后期峰值的维度则更具概念性,我们的研究结果表明,不同人群的概念处理变化更大。总之,这些数据全面说明了各种物体特性如何在人脑中展开,并有助于物体视觉的丰富性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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