2018
DOI: 10.1098/rsfs.2018.0011
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Not-So-CLEVR: learning same–different relations strains feedforward neural networks

Abstract: The advent of deep learning has recently led to great successes in various engineering applications. As a prime example, convolutional neural networks, a type of feedforward neural network, now approach human accuracy on visual recognition tasks like image classification and face recognition. However, here we will show that feedforward neural networks struggle to learn abstract visual relations that are effortlessly recognized by non-human primates, birds, rodents and even insects. We systematically study the … Show more

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Cited by 85 publications
(122 citation statements)
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“…The challenge broke the state of the art in computer vision in 2011 right before the deep learning era. Today, the challenge seems to remain significant for modern DCNNs as shown by several groups 93–95 …”
Section: The Role Of Recurrence Beyond Recognitionmentioning
confidence: 99%
See 2 more Smart Citations
“…The challenge broke the state of the art in computer vision in 2011 right before the deep learning era. Today, the challenge seems to remain significant for modern DCNNs as shown by several groups 93–95 …”
Section: The Role Of Recurrence Beyond Recognitionmentioning
confidence: 99%
“…In particular, Kim et al 95 . found a clear dichotomy between visual reasoning tasks: while spatial relations appeared to be easily learnable by feedforward neural networks (DCNNs and their extensions), same−different relations appear to pose a particular strain on these networks (i.e., they require deeper architectures and significantly more training examples to be learned).…”
Section: The Role Of Recurrence Beyond Recognitionmentioning
confidence: 99%
See 1 more Smart Citation
“…However, despite the remarkable accuracy reached in these recognition tasks, the limitations of DCNs are becoming increasingly evident (see Serre, 2019 for a very recent review). Beyond image categorization tasks, DCNs appear to struggle to learn to solve relatively simple visual reasoning tasks otherwise trivial for the human brain [6,7]. A recent study (Kim et al, 2018) thoroughly investigated the ability of DCN architectures to learn to solve various visual reasoning tasks and found an apparent dichotomy between problems: on the one hand stand tasks that require judging the spatial relations between items (Spatial Relationship -SR); on the other, those that require comparing items (Same-Different -SD).…”
Section: Introductionmentioning
confidence: 99%
“…Beyond image categorization tasks, DCNs appear to struggle to learn to solve relatively simple visual reasoning tasks otherwise trivial for the human brain [6,7]. A recent study (Kim et al, 2018) thoroughly investigated the ability of DCN architectures to learn to solve various visual reasoning tasks and found an apparent dichotomy between problems: on the one hand stand tasks that require judging the spatial relations between items (Spatial Relationship -SR); on the other, those that require comparing items (Same-Different -SD). Importantly, Kim This prompts the question of how biological visual systems handle such tasks so efficiently.…”
Section: Introductionmentioning
confidence: 99%