2021
DOI: 10.48550/arxiv.2103.10571
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Generic Perceptual Loss for Modeling Structured Output Dependencies

Abstract: The perceptual loss has been widely used as an effective loss term in image synthesis tasks including image superresolution [16], and style transfer [14]. It was believed that the success lies in the high-level perceptual feature representations extracted from CNNs pretrained with a large set of images. Here we reveal that, what matters is the network structure instead of the trained weights. Without any learning, the structure of a deep network is sufficient to capture the dependencies between multiple levels… Show more

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