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Distinct contributions of functional and deep neural network features to representational similarity of scenes in human brain and behavior

机译:功能和深度神经网络功能对人脑场景和行为的表示相似性的不同贡献

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摘要

Inherent correlations between visual and semantic features in real-world scenes make it difficult to determine how different scene properties contribute to neural representations. Here, we assessed the contributions of multiple properties to scene representation by partitioning the variance explained in human behavioral and brain measurements by three feature models whose inter-correlations were minimized a priori through stimulus preselection. Behavioral assessments of scene similarity reflected unique contributions from a functional feature model indicating potential actions in scenes as well as high-level visual features from a deep neural network (DNN). In contrast, similarity of cortical responses in scene-selective areas was uniquely explained by mid- and high-level DNN features only, while an object label model did not contribute uniquely to either domain. The striking dissociation between functional and DNN features in their contribution to behavioral and brain representations of scenes indicates that scene-selective cortex represents only a subset of behaviorally relevant scene information.
机译:现实场景中视觉和语义特征之间的内在关联使得很难确定不同的场景属性如何影响神经表示。在这里,我们通过使用三个特征模型来划分人类行为和大脑测量中解释的方差,从而评估了多种属性对场景表示的贡献,这三个特征模型的相互关联通过刺激预选而被最小化。场景相似性的行为评估反映了功能特征模型的独特贡献,该功能模型指示了场景中的潜在动作以及来自深度神经网络(DNN)的高级视觉特征。相比之下,场景选择区域中皮质反应的相似性仅由中高级DNN特征来唯一解释,而对象标签模型对这两个域都没有唯一贡献。功能和DNN特征对场景的行为和大脑表示的贡献之间的显着分离表明,场景选择性皮质仅表示行为相关场景信息的子集。

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