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Enhancing Low-resolution Image Representation Through Normalizing Flows

About

Low-resolution image representation is a special form of sparse representation that retains only low-frequency information while discarding high-frequency components. This property reduces storage and transmission costs and benefits various image processing tasks. However, a key challenge is to preserve essential visual content while maintaining the ability to accurately reconstruct the original images. This work proposes LR2Flow, a nonlinear framework that learns low-resolution image representations by integrating wavelet tight frame blocks with normalizing flows. We conduct a reconstruction error analysis of the proposed network, which demonstrates the necessity of designing invertible neural networks in the wavelet tight frame domain. Experimental results on various tasks, including image rescaling, compression, and denoising, demonstrate the effectiveness of the learned representations and the robustness of the proposed framework.

Chenglong Bao, Tongyao Pang, Zuowei Shen, Dihan Zheng, Yihang Zou• 2026

Related benchmarks

TaskDatasetResultRank
Image ReconstructionBSD100 (val)
PSNR44.94
48
Image ReconstructionUrban100 (val)
PSNR43.56
48
Image DenoisingKodak24
PSNR (sigma=50)29.88
48
Image DenoisingUrban100
PSNR (sigma=50)29.65
30
Image RescalingSet5 (val)
PSNR46.87
28
Image RescalingSet14 (val)
PSNR43.98
28
Image DenoisingMcMaster
PSNR (σ=25)33.15
24
Image RescalingDIV2K (test)
PSNR (QF=30)32.37
18
Image RescalingDIV2K (val)
PSNR47.55
17
Image DenoisingCBSD68
PSNR (sigma_n=50)28.5
10
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