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Hierarchical Modular Optimization of Convolutional Networks Achieves Representations Similar to Macaque IT and Human Ventral Stream

机译:卷积网络的分层模块化优化达到了类似于猕猴的表示和人类腹侧流

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Humans recognize visually-presented objects rapidly and accurately. To understand this ability, we seek to construct models of the ventral stream, the series of cortical areas thought to subserve object recognition. One tool to assess the quality of a model of the ventral stream is the Representational Dissimilarity Matrix (RDM), which uses a set of visual stimuli and measures the distances produced in either the brain (i.e. fMRI voxel responses, neural firing rates) or in models (features). Previous work has shown that all known models of the ventral stream fail to capture the RDM pattern observed in either IT cortex, the highest ventral area, or in the human ventral stream. In this work, we construct models of the ventral stream using a novel optimization procedure for category-level object recognition problems, and produce RDMs resembling both macaque IT and human ventral stream. The model, while novel in the optimization procedure, further develops a long-standing functional hypothesis that the ventral visual stream is a hierarchically arranged series of processing stages optimized for visual object recognition.
机译:人类快速准确地识别视觉上呈现的物体。要了解这种能力,我们寻求构建腹侧流的模型,这一系列皮质地区想到了对象识别。一种评估腹侧流模型质量的工具是代表性异化矩阵(RDM),其使用一组视觉刺激并测量大脑中产生的距离(即FMRI voxel反应,神经烧制率)或模型(功能)。以前的工作表明,腹侧流的所有已知模型都无法捕获其皮质,最高腹侧区域或人类腹侧流中观察到的RDM模式。在这项工作中,我们使用新颖的优化程序来构建腹侧流的模型,以进行类别级对象识别问题,并产生类似于猕猴和人类腹部流的RDM。该模型,而新颖在优化过程中,进一步发展了长期存在的功能假设,即腹侧视觉流是针对视觉对象识别优化的分层排列的处理阶段。

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