Optimization of Module Transferability in Single Image Super-Resolution: Universality Assessment and Cycle Residual Blocks
Journal:
arXiv
Published Date:
May 6, 2025
Abstract
Deep learning has substantially advanced the Single Image Super-Resolution
(SISR). However, existing researches have predominantly focused on raw
performance gains, with little attention paid to quantifying the
transferability of architectural components. In this paper, we introduce the
concept of "Universality" and its associated definitions which extend the
traditional notion of "Generalization" to encompass the modules' ease of
transferability, thus revealing the relationships between module universality
and model generalizability. Then we propose the Universality Assessment
Equation (UAE), a metric for quantifying how readily a given module could be
transplanted across models. Guided by the UAE results of standard residual
blocks and other plug-and-play modules, we further design two optimized
modules, Cycle Residual Block (CRB) and Depth-Wise Cycle Residual Block (DCRB).
Through comprehensive experiments on natural-scene benchmarks, remote-sensing
datasets, extreme-industrial imagery and on-device deployments, we demonstrate
that networks embedded with the proposed plug-and-play modules outperform
several state-of-the-arts, reaching a PSNR enhancement of up to 0.83dB or
enabling a 71.3% reduction in parameters with negligible loss in reconstruction
fidelity.