Litcius/Paper detail

Omni Aggregation Networks for Lightweight Image Super-Resolution

Hang Wang, Xuanhong Chen, Bingbing Ni, Yutian Liu, Jinfan Liu

2023177 citationsDOI

Abstract

While lightweight ViT framework has made tremendous progress in image super-resolution, its uni-dimensional self-attention modeling, as well as homogeneous aggregation scheme, limit its effective receptive field (ERF) to include more comprehensive interactions from both spatial and channel dimensions. To tackle these drawbacks, this work proposes two enhanced components under a new Omni-SR architecture. First, an Omni Self-Attention (OSA) block is proposed based on dense interaction principle, which can simultaneously model pixel-interaction from both spatial and channel dimensions, mining the potential correlations across omni-axis (i.e., spatial and channel). Coupling with mainstream window partitioning strategies, OSA can achieve superior performance with compelling computational budgets. Second, a multi-scale interaction scheme is proposed to mitigate sub-optimal ERF (i.e., premature saturation) in shallow models, which facilitates local propagation and meso-/global-scale interactions, rendering an omni-scale aggregation building block. Extensive experiments demonstrate that Omni-SR achieves recordhigh performance on lightweight super-resolution benchmarks (e.g., 26.95dB@Urban100 x4 with only 792K parameters). Our code is available at https://github.com/Francis0625/Omni-SR.

Topics & Concepts

Computer scienceRendering (computer graphics)Image resolutionBlock (permutation group theory)PixelChannel (broadcasting)Artificial intelligenceTelecommunicationsMathematicsGeometryAdvanced Image Processing TechniquesAdvanced Vision and ImagingImage and Signal Denoising Methods
Omni Aggregation Networks for Lightweight Image Super-Resolution | Litcius