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arxiv: 2201.10084 · v2 · pith:FAWHKPBG · submitted 2022-01-25 · cs.CV

Revisiting L1 Loss in Super-Resolution: A Probabilistic View and Beyond

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classification cs.CV
keywords losssuper-resolutionfunctionimageprobabilisticaimsarchitecturesbest
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Super-resolution as an ill-posed problem has many high-resolution candidates for a low-resolution input. However, the popular $\ell_1$ loss used to best fit the given HR image fails to consider this fundamental property of non-uniqueness in image restoration. In this work, we fix the missing piece in $\ell_1$ loss by formulating super-resolution with neural networks as a probabilistic model. It shows that $\ell_1$ loss is equivalent to a degraded likelihood function that removes the randomness from the learning process. By introducing a data-adaptive random variable, we present a new objective function that aims at minimizing the expectation of the reconstruction error over all plausible solutions. The experimental results show consistent improvements on mainstream architectures, with no extra parameter or computing cost at inference time.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Interest Entanglement: The Hidden Barrier to Blind Super-Resolution Optimization

    cs.CV 2026-06 unverdicted novelty 4.0

    Proposes the SFR framework and InfoSqueeze module to resolve Interest Entanglement by decoupling regression and perceptual objectives in image super-resolution through shared feature representations.