A generative vision model that trains with high data efficiency and breaks text-based CAPTCHAs

Learning from a few examples and generalizing to markedly different situations are capabilities of human visual intelligence that are yet to be matched by leading machine learning models. By drawing inspiration from systems neuroscience, we introduce a probabilistic generative model for vision in wh...

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Bibliographic Details
Published inScience (American Association for the Advancement of Science) Vol. 358; no. 6368
Main Authors George, Dileep, Lehrach, Wolfgang, Kansky, Ken, Lázaro-Gredilla, Miguel, Laan, Christopher, Marthi, Bhaskara, Lou, Xinghua, Meng, Zhaoshi, Liu, Yi, Wang, Huayan, Lavin, Alex, Phoenix, D Scott
Format Journal Article
LanguageEnglish
Published United States 08.12.2017
Online AccessGet more information
ISSN1095-9203
DOI10.1126/science.aag2612

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Summary:Learning from a few examples and generalizing to markedly different situations are capabilities of human visual intelligence that are yet to be matched by leading machine learning models. By drawing inspiration from systems neuroscience, we introduce a probabilistic generative model for vision in which message-passing-based inference handles recognition, segmentation, and reasoning in a unified way. The model demonstrates excellent generalization and occlusion-reasoning capabilities and outperforms deep neural networks on a challenging scene text recognition benchmark while being 300-fold more data efficient. In addition, the model fundamentally breaks the defense of modern text-based CAPTCHAs (Completely Automated Public Turing test to tell Computers and Humans Apart) by generatively segmenting characters without CAPTCHA-specific heuristics. Our model emphasizes aspects such as data efficiency and compositionality that may be important in the path toward general artificial intelligence.
ISSN:1095-9203
DOI:10.1126/science.aag2612