NAS-DIP: Learning Deep Image Prior with Neural Architecture Search
Recent work has shown that the structure of deep convolutional neural networks can be used as a structured image prior for solving various inverse image restoration tasks. Instead of using hand-designed architectures, we propose to search for neural architectures that capture stronger image priors....
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Zusammenfassung: | Recent work has shown that the structure of deep convolutional neural
networks can be used as a structured image prior for solving various inverse
image restoration tasks. Instead of using hand-designed architectures, we
propose to search for neural architectures that capture stronger image priors.
Building upon a generic U-Net architecture, our core contribution lies in
designing new search spaces for (1) an upsampling cell and (2) a pattern of
cross-scale residual connections. We search for an improved network by
leveraging an existing neural architecture search algorithm (using
reinforcement learning with a recurrent neural network controller). We validate
the effectiveness of our method via a wide variety of applications, including
image restoration, dehazing, image-to-image translation, and matrix
factorization. Extensive experimental results show that our algorithm performs
favorably against state-of-the-art learning-free approaches and reaches
competitive performance with existing learning-based methods in some cases. |
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DOI: | 10.48550/arxiv.2008.11713 |