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QuantSR+: Pushing the Limit of Quantized Image Super-Resolution Networks

About

Low-bit quantization is widely used to compress super-resolution (SR) models and reduce storage and computation costs for deployment on resource-limited devices. However, when SR models are pushed to ultra-low precision (2-4 bits), performance can drop sharply due to diminished representational capacity and the detail-sensitive nature of SR. To address these issues, we propose QuantSR+, a unified framework that improves quantization operators, network design, and training optimization, achieving better trade-offs between accuracy and efficiency than prior low-bit SR methods. QuantSR+ mainly relies on three technical contributions: (1) Redistribution-driven Bit Determination (RBD), which reshapes quantization distributions in both forward and backward passes to preserve representation fidelity; (2) Quantized Slimmable Architecture (QSA), which begins with an over-parameterized model and progressively prunes less critical blocks to meet efficiency budgets while pushing the accuracy performance; and (3) Slimming-guided Function-localized Distillation (SFD), which enforces block-aware feature alignment via a direct loss and a progressive, function-local training schedule to capture quantization effects better and speed up convergence. Extensive experiments show that QuantSR+ achieves state-of-the-art performance against both specialized quantized SR methods and generic quantization approaches. For SwinIR-S on Urban100 (x4), it improves PSNR by 0.29 dB over the 2-bit SOTA baseline. Meanwhile, it delivers strong efficiency gains at 2-bit, reducing operations by up to 87.9% and storage by 89.4%. QuantSR+ is effective for both convolutional and transformer-based SR models, indicating broad applicability.

Haotong Qin, Xudong Ma, Xianglong Liu, Jie Luo, Jinyang Guo, Michele Magno, Yulun Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Image Super-resolutionManga109
PSNR38.89
875
Super-ResolutionSet5
PSNR37.96
821
Image Super-resolutionSet5
PSNR38.08
774
Super-ResolutionSet14
PSNR33.6
649
Image Super-resolutionSet14
PSNR33.86
565
Super-ResolutionB100
PSNR32.15
465
Image Super-resolutionUrban100
PSNR32.31
424
Super-ResolutionManga109
PSNR38.55
368
Image Super-resolutionB100
PSNR32.2
137
Super-ResolutionSet5 (val)
PSNR32.13
9
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