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Generating images with recurrent adversarial networks

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arxiv 1602.05110 v5 pith:UJ5RMUW5 submitted 2016-02-16 cs.LG cs.CV

Generating images with recurrent adversarial networks

classification cs.LG cs.CV
keywords adversarialimagesnetworksrecurrentfeaturesimageproposevisual
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Gatys et al. (2015) showed that optimizing pixels to match features in a convolutional network with respect reference image features is a way to render images of high visual quality. We show that unrolling this gradient-based optimization yields a recurrent computation that creates images by incrementally adding onto a visual "canvas". We propose a recurrent generative model inspired by this view, and show that it can be trained using adversarial training to generate very good image samples. We also propose a way to quantitatively compare adversarial networks by having the generators and discriminators of these networks compete against each other.

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