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Emerging Object Representations in the Visual System Predict Reaction Times for Categorization

机译:视觉系统中的新兴对象表示可预测分类反应时间

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摘要

Recognizing an object takes just a fraction of a second, less than the blink of an eye. Applying multivariate pattern analysis, or “brain decoding”, methods to magnetoencephalography (MEG) data has allowed researchers to characterize, in high temporal resolution, the emerging representation of object categories that underlie our capacity for rapid recognition. Shortly after stimulus onset, object exemplars cluster by category in a high-dimensional activation space in the brain. In this emerging activation space, the decodability of exemplar category varies over time, reflecting the brain’s transformation of visual inputs into coherent category representations. How do these emerging representations relate to categorization behavior? Recently it has been proposed that the distance of an exemplar representation from a categorical boundary in an activation space is critical for perceptual decision-making, and that reaction times should therefore correlate with distance from the boundary. The predictions of this distance hypothesis have been born out in human inferior temporal cortex (IT), an area of the brain crucial for the representation of object categories. When viewed in the context of a time varying neural signal, the optimal time to “read out” category information is when category representations in the brain are most decodable. Here, we show that the distance from a decision boundary through activation space, as measured using MEG decoding methods, correlates with reaction times for visual categorization during the period of peak decodability. Our results suggest that the brain begins to read out information about exemplar category at the optimal time for use in choice behaviour, and support the hypothesis that the structure of the representation for objects in the visual system is partially constitutive of the decision process in recognition.
机译:识别物体只需要几分之一秒,比眨眼还少。将多元模式分析或“大脑解码”方法应用于脑磁图(MEG)数据,使研究人员能够在高时间分辨率下表征新兴的物体类别表示,这些表示形式是我们快速识别能力的基础。刺激发作后不久,对象样本会按类别聚集在大脑的高维激活空间中。在这个新兴的激活空间中,示例类别的可解码性随时间而变化,反映出大脑将视觉输入转换为连贯的类别表示形式。这些新兴的表示形式如何与分类行为相关?最近,已经提出,示例表示与激活空间中分类边界的距离对于感知决策至关重要,因此反应时间应与距边界的距离相关。这种距离假说的预测已经在人类下颞叶皮质(IT)中诞生,ITR是大脑中代表对象类别至关重要的区域。当在时变神经信号的上下文中查看时,“读出”类别信息的最佳时间是大脑中类别表示最可解码的时间。在这里,我们表明,使用MEG解码方法测得的从决策边界到激活空间的距离与峰值可解码性期间视觉分类的反应时间相关。我们的研究结果表明,大脑开始在最佳时间读取有关示例类别的信息以用于选择行为,并支持这样的假设:视觉系统中对象的表示结构部分地构成了识别过程。

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