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Seeing different objects in different ways: Measuring ventral visual tuning to sensory and semantic features with dynamically adaptive imaging

机译:以不同的方式看到不同的物体:通过动态自适应成像测量腹侧视觉对感觉和语义特征的调节

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摘要

A key challenge of object recognition is achieving a balance between selectivity for relevant features and invariance to irrelevant ones. Computational and cognitive models predict that optimal selectivity for features will differ by object, and here we investigate whether this is reflected in visual representations in the human ventral stream. We describe a new real‐time neuroimaging method, dynamically adaptive imaging (DAI), that enabled measurement of neural selectivity along multiple feature dimensions in the neighborhood of single referent objects. The neural response evoked by a referent was compared to that evoked by 91 naturalistic objects using multi‐voxel pattern analysis. Iteratively, the objects evoking the most similar responses were selected and presented again, to converge upon a subset that characterizes the referent's “neural neighborhood.” This was used to derive the feature selectivity of the response. For three different referents, we found strikingly different selectivity, both in individual features and in the balance of tuning to sensory versus semantic features. Additional analyses placed a lower bound on the number of distinct activation patterns present. The results suggest that either the degree of specificity available for object representation in the ventral stream varies by class, or that different objects evoke different processing strategies. Hum Brain Mapp, 2012. © 2011 Wiley Periodicals, Inc.
机译:对象识别的关键挑战是在对相关特征的选择性和对无关特征的不变性之间取得平衡。计算模型和认知模型预测,特征的最佳选择性会因对象的不同而不同,因此在这里我们调查这是否反映在人腹侧流的视觉表示中。我们描述了一种新的实时神经成像方法,即动态自适应成像(DAI),该方法可以沿单个参照物附近的多个特征维测量神经选择性。使用多体素模式分析将参照物引起的神经反应与91个自然物体引起的神经反应进行比较。反复地,选择和给出最相似响应的对象,然后再次呈现,以收敛到表征参照对象“神经邻域”的子集上。这用于导出响应的特征选择性。对于三个不同的对象,我们发现在单个功能以及调优感官功能和语义功能之间的平衡方面,选择力显着不同。其他分析为存在的不同激活模式的数量设置了下限。结果表明,要么腹类流中可用于对象表示的特异性程度随类别而变化,要么不同的对象会引起不同的处理策略。嗡嗡声大脑Mapp,2012年。©2011 Wiley Periodicals,Inc.

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