Back to Search Start Over

Geometric Distortion Guided Transformer for Omnidirectional Image Super-Resolution

Authors :
Yang, Cuixin
Dong, Rongkang
Xiao, Jun
Zhang, Cong
Lam, Kin-Man
Zhou, Fei
Qiu, Guoping
Publication Year :
2024

Abstract

As virtual and augmented reality applications gain popularity, omnidirectional image (ODI) super-resolution has become increasingly important. Unlike 2D plain images that are formed on a plane, ODIs are projected onto spherical surfaces. Applying established image super-resolution methods to ODIs, therefore, requires performing equirectangular projection (ERP) to map the ODIs onto a plane. ODI super-resolution needs to take into account geometric distortion resulting from ERP. However, without considering such geometric distortion of ERP images, previous deep-learning-based methods only utilize a limited range of pixels and may easily miss self-similar textures for reconstruction. In this paper, we introduce a novel Geometric Distortion Guided Transformer for Omnidirectional image Super-Resolution (GDGT-OSR). Specifically, a distortion modulated rectangle-window self-attention mechanism, integrated with deformable self-attention, is proposed to better perceive the distortion and thus involve more self-similar textures. Distortion modulation is achieved through a newly devised distortion guidance generator that produces guidance by exploiting the variability of distortion across latitudes. Furthermore, we propose a dynamic feature aggregation scheme to adaptively fuse the features from different self-attention modules. We present extensive experimental results on public datasets and show that the new GDGT-OSR outperforms methods in existing literature.<br />Comment: 13 pages, 12 figures, journal

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.10869
Document Type :
Working Paper