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How much 'human-like' visual experience do current self-supervised learning algorithms need to achieve human-level object recognition?

2021-09-23 17:45:36
A. Emin Orhan

Abstract

This paper addresses a fundamental question: how good are our current self-supervised visual representation learning algorithms relative to humans? More concretely, how much "human-like", natural visual experience would these algorithms need in order to reach human-level performance in a complex, realistic visual object recognition task such as ImageNet? Using a scaling experiment, here we estimate that the answer is on the order of a million years of natural visual experience, in other words several orders of magnitude longer than a human lifetime. However, this estimate is quite sensitive to some underlying assumptions, underscoring the need to run carefully controlled human experiments. We discuss the main caveats surrounding our estimate and the implications of this rather surprising result.

Abstract (translated)

URL

https://arxiv.org/abs/2109.11523

PDF

https://arxiv.org/pdf/2109.11523.pdf


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