2019
DOI: 10.1101/744268
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Crowding Reveals Fundamental Differences in Local vs. Global Processing in Humans and Machines

Abstract: 6Feedforward Convolutional Neural Networks (ffCNNs) have become state-of-the-art models both 7 in computer vision and neuroscience. However, human-like performance of ffCNNs does not 8 necessarily imply human-like computations. Previous studies have suggested that current ffCNNs 9 do not make use of global shape information. However, it is currently unclear whether this reflects 10 fundamental differences between ffCNN and human processing or is merely an artefact of how 11 ffCNNs are trained. Here, we use vis… Show more

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Cited by 2 publications
(4 citation statements)
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“…Hence, our results show that, given adequate priors, CapsNets explain uncrowding. We have shown that ffCNNs and CNNs with lateral or top-down recurrent connections do not produce uncrowding, even when they are trained identically on groups of identical shapes and successfully learn on the training data, comparably to the CapsNets (furthermore, we showed previously that ffCNNs trained on large datasets, which are often used as general models of vision, do not show uncrowding either; [17]). This shows that merely training networks on groups of identical shapes is not sufficient to explain uncrowding.…”
Section: Plos Computational Biologymentioning
confidence: 79%
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“…Hence, our results show that, given adequate priors, CapsNets explain uncrowding. We have shown that ffCNNs and CNNs with lateral or top-down recurrent connections do not produce uncrowding, even when they are trained identically on groups of identical shapes and successfully learn on the training data, comparably to the CapsNets (furthermore, we showed previously that ffCNNs trained on large datasets, which are often used as general models of vision, do not show uncrowding either; [17]). This shows that merely training networks on groups of identical shapes is not sufficient to explain uncrowding.…”
Section: Plos Computational Biologymentioning
confidence: 79%
“…Previously, we have shown that these global effects of crowding cannot be explained by models based on the classic framework of vision, including ffCNNs [9,17,38]. Here, we propose a new framework to understand these global effects.…”
Section: Introductionmentioning
confidence: 89%
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