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Papers/Recovering Realistic Texture in Image Super-resolution by ...

Recovering Realistic Texture in Image Super-resolution by Deep Spatial Feature Transform

Xintao Wang, Ke Yu, Chao Dong, Chen Change Loy

2018-04-09CVPR 2018 6Super-ResolutionImage Super-ResolutionSemantic Segmentation
PaperPDFCodeCodeCode(official)Code

Abstract

Despite that convolutional neural networks (CNN) have recently demonstrated high-quality reconstruction for single-image super-resolution (SR), recovering natural and realistic texture remains a challenging problem. In this paper, we show that it is possible to recover textures faithful to semantic classes. In particular, we only need to modulate features of a few intermediate layers in a single network conditioned on semantic segmentation probability maps. This is made possible through a novel Spatial Feature Transform (SFT) layer that generates affine transformation parameters for spatial-wise feature modulation. SFT layers can be trained end-to-end together with the SR network using the same loss function. During testing, it accepts an input image of arbitrary size and generates a high-resolution image with just a single forward pass conditioned on the categorical priors. Our final results show that an SR network equipped with SFT can generate more realistic and visually pleasing textures in comparison to state-of-the-art SRGAN and EnhanceNet.

Results

TaskDatasetMetricValueModel
Super-ResolutionSet14 - 4x upscalingPSNR26.13SFT-GAN
Super-ResolutionSet14 - 4x upscalingSSIM0.694SFT-GAN
Super-ResolutionBSD100 - 4x upscalingPSNR25.33SFT-GAN
Super-ResolutionBSD100 - 4x upscalingSSIM0.651SFT-GAN
Image Super-ResolutionSet14 - 4x upscalingPSNR26.13SFT-GAN
Image Super-ResolutionSet14 - 4x upscalingSSIM0.694SFT-GAN
Image Super-ResolutionBSD100 - 4x upscalingPSNR25.33SFT-GAN
Image Super-ResolutionBSD100 - 4x upscalingSSIM0.651SFT-GAN
3D Object Super-ResolutionSet14 - 4x upscalingPSNR26.13SFT-GAN
3D Object Super-ResolutionSet14 - 4x upscalingSSIM0.694SFT-GAN
3D Object Super-ResolutionBSD100 - 4x upscalingPSNR25.33SFT-GAN
3D Object Super-ResolutionBSD100 - 4x upscalingSSIM0.651SFT-GAN
16kSet14 - 4x upscalingPSNR26.13SFT-GAN
16kSet14 - 4x upscalingSSIM0.694SFT-GAN
16kBSD100 - 4x upscalingPSNR25.33SFT-GAN
16kBSD100 - 4x upscalingSSIM0.651SFT-GAN

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