Invertible Rescaling Network and Its Extensions
Mingqing Xiao, Shuxin Zheng, Chang Liu, Zhouchen Lin, Tie-Yan Liu

TL;DR
This paper introduces an invertible rescaling network that models image degradation and restoration as a bijective transformation, effectively handling information loss and improving image upscaling, colorization, and compression tasks.
Contribution
The work presents a novel invertible framework for image rescaling and related tasks, enabling better modeling of information loss and recovery compared to prior methods.
Findings
Significant improvement in image upscaling quality.
Enhanced colorization and decolorization results.
Better rate-distortion performance in image compression.
Abstract
Image rescaling is a commonly used bidirectional operation, which first downscales high-resolution images to fit various display screens or to be storage- and bandwidth-friendly, and afterward upscales the corresponding low-resolution images to recover the original resolution or the details in the zoom-in images. However, the non-injective downscaling mapping discards high-frequency contents, leading to the ill-posed problem for the inverse restoration task. This can be abstracted as a general image degradation-restoration problem with information loss. In this work, we propose a novel invertible framework to handle this general problem, which models the bidirectional degradation and restoration from a new perspective, i.e. invertible bijective transformation. The invertibility enables the framework to model the information loss of pre-degradation in the form of distribution, which…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Processing Techniques · Image and Signal Denoising Methods
