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Papers/Self-Asymmetric Invertible Network for Compression-Aware I...

Self-Asymmetric Invertible Network for Compression-Aware Image Rescaling

Jinhai Yang, Mengxi Guo, Shijie Zhao, Junlin Li, Li Zhang

2023-03-04Image RescalingImage Compression
PaperPDFCode(official)

Abstract

High-resolution (HR) images are usually downscaled to low-resolution (LR) ones for better display and afterward upscaled back to the original size to recover details. Recent work in image rescaling formulates downscaling and upscaling as a unified task and learns a bijective mapping between HR and LR via invertible networks. However, in real-world applications (e.g., social media), most images are compressed for transmission. Lossy compression will lead to irreversible information loss on LR images, hence damaging the inverse upscaling procedure and degrading the reconstruction accuracy. In this paper, we propose the Self-Asymmetric Invertible Network (SAIN) for compression-aware image rescaling. To tackle the distribution shift, we first develop an end-to-end asymmetric framework with two separate bijective mappings for high-quality and compressed LR images, respectively. Then, based on empirical analysis of this framework, we model the distribution of the lost information (including downscaling and compression) using isotropic Gaussian mixtures and propose the Enhanced Invertible Block to derive high-quality/compressed LR images in one forward pass. Besides, we design a set of losses to regularize the learned LR images and enhance the invertibility. Extensive experiments demonstrate the consistent improvements of SAIN across various image rescaling datasets in terms of both quantitative and qualitative evaluation under standard image compression formats (i.e., JPEG and WebP).

Results

TaskDatasetMetricValueModel
Super-ResolutionDIV2K val-q90-2xPSNR35.96SAIN
Super-ResolutionDIV2K val-q90-2xSSIM0.9419SAIN
Super-ResolutionDIV2K val-q30-2xPSNR31.47SAIN
Super-ResolutionDIV2K val-q30-2xSSIM0.8747SAIN
Super-ResolutionDIV2K val-q70-2xPSNR34.73SAIN
Super-ResolutionDIV2K val-q70-2xSSIM0.9296SAIN
Super-ResolutionDIV2K val-q70-4xPSNR29.83SAIN
Super-ResolutionDIV2K val-q70-4xSSIM0.8272SAIN
Super-ResolutionDIV2K val-q30-4xPSNR27.9SAIN
Super-ResolutionDIV2K val-q30-4xSSIM0.7745SAIN
Super-ResolutionDIV2K val-q90-4xPSNR30.31SAIN
Super-ResolutionDIV2K val-q90-4xSSIM0.8367SAIN
Super-ResolutionDIV2K val-q50-2xPSNR33.17SAIN
Super-ResolutionDIV2K val-q50-2xSSIM0.9082SAIN
Super-ResolutionDIV2K val-q50-4xPSNR29.05SAIN
Super-ResolutionDIV2K val-q50-4xSSIM0.8088SAIN
3D Object Super-ResolutionDIV2K val-q90-2xPSNR35.96SAIN
3D Object Super-ResolutionDIV2K val-q90-2xSSIM0.9419SAIN
3D Object Super-ResolutionDIV2K val-q30-2xPSNR31.47SAIN
3D Object Super-ResolutionDIV2K val-q30-2xSSIM0.8747SAIN
3D Object Super-ResolutionDIV2K val-q70-2xPSNR34.73SAIN
3D Object Super-ResolutionDIV2K val-q70-2xSSIM0.9296SAIN
3D Object Super-ResolutionDIV2K val-q70-4xPSNR29.83SAIN
3D Object Super-ResolutionDIV2K val-q70-4xSSIM0.8272SAIN
3D Object Super-ResolutionDIV2K val-q30-4xPSNR27.9SAIN
3D Object Super-ResolutionDIV2K val-q30-4xSSIM0.7745SAIN
3D Object Super-ResolutionDIV2K val-q90-4xPSNR30.31SAIN
3D Object Super-ResolutionDIV2K val-q90-4xSSIM0.8367SAIN
3D Object Super-ResolutionDIV2K val-q50-2xPSNR33.17SAIN
3D Object Super-ResolutionDIV2K val-q50-2xSSIM0.9082SAIN
3D Object Super-ResolutionDIV2K val-q50-4xPSNR29.05SAIN
3D Object Super-ResolutionDIV2K val-q50-4xSSIM0.8088SAIN

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