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Papers/One-to-many Approach for Improving Super-Resolution

One-to-many Approach for Improving Super-Resolution

Sieun Park, Eunho Lee

2021-06-19NeurIPS 2021 12Super-ResolutionImage Super-Resolution
PaperPDFCode(official)

Abstract

Recently, there has been discussions on the ill-posed nature of super-resolution that multiple possible reconstructions exist for a given low-resolution image. Using normalizing flows, SRflow[23] achieves state-of-the-art perceptual quality by learning the distribution of the output instead of a deterministic output to one estimate. In this paper, we adapt the concepts of SRFlow to improve GAN-based super-resolution by properly implementing the one-to-many property. We modify the generator to estimate a distribution as a mapping from random noise. We improve the content loss that hampers the perceptual training objectives. We also propose additional training techniques to further enhance the perceptual quality of generated images. Using our proposed methods, we were able to improve the performance of ESRGAN[1] in x4 perceptual SR and achieve the state-of-the-art LPIPS score in x16 perceptual extreme SR by applying our methods to RFB-ESRGAN[21].

Results

TaskDatasetMetricValueModel
Super-ResolutionDIV8K val - 16x upscalingLPIPS0.321Ours w/o cycle-loss
Super-ResolutionUrban100 - 4x upscalingLPIPS0.1007Config (e)
Super-ResolutionBSD100 - 4x upscalingLPIPS0.1209Config (e)
Image Super-ResolutionDIV8K val - 16x upscalingLPIPS0.321Ours w/o cycle-loss
Image Super-ResolutionUrban100 - 4x upscalingLPIPS0.1007Config (e)
Image Super-ResolutionBSD100 - 4x upscalingLPIPS0.1209Config (e)
3D Object Super-ResolutionDIV8K val - 16x upscalingLPIPS0.321Ours w/o cycle-loss
3D Object Super-ResolutionUrban100 - 4x upscalingLPIPS0.1007Config (e)
3D Object Super-ResolutionBSD100 - 4x upscalingLPIPS0.1209Config (e)
16kDIV8K val - 16x upscalingLPIPS0.321Ours w/o cycle-loss
16kUrban100 - 4x upscalingLPIPS0.1007Config (e)
16kBSD100 - 4x upscalingLPIPS0.1209Config (e)

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