Artigo Revisado por pares

Omnidirectional Image Super-Resolution via Latitude Adaptive Network

2022; Institute of Electrical and Electronics Engineers; Volume: 25; Linguagem: Inglês

10.1109/tmm.2022.3171401

ISSN

1941-0077

Autores

Xin Deng, Hao Wang, Mai Xu, Li Li, Zulin Wang,

Tópico(s)

Image and Signal Denoising Methods

Resumo

Omnidirectional images (ODI), also known as 360 images, have recently attracted extensive attention from both academia and industry. However, due to storage and transmission limitations, ODIs are usually at extremely low resolution. Thus, it is necessary to restore a high-resolution ODI from a low-resolution ODI, i.e., omnidirectional image super-resolution (ODI-SR). Different from traditional two-dimensional (2D) image SR, the challenge of ODI-SR is the nonuniformly distributed pixel density and geometric distortion across latitudes, which makes traditional SR methods difficult to be applied in ODI-SR. Towards ODI-SR, we propose in this paper a novel latitude-aware upscaling network, namely LAU-Net+, which fully considers the above characteristics of ODIs. In our network, different latitude bands can learn to adopt distinct upscaling factors, which significantly saves the computational resources and improves the SR efficiency. Specifically, a Laplacian multilevel pyramid network is introduced in which the upscaling factor is gradually increased with the number of levels. Each level is composed of a feature enhancement module (FEM), a drop-band decision module (DDM) and a high-latitude enhancement module (HEM). The FEM module serves to enhance the high-level features extracted from the input ODI, while the role of DDM is to dynamically drop the unnecessary high latitude bands and send the remained bands to the next level. The HEM is adopted to further enhance high-level features of dropped latitude bands with a lightweight architecture. In DDM, we develop a reinforcement learning scheme with a latitude adaptive reward to determine which band should be dropped. To the best of our knowledge, our method is the first work which considers the latitude characteristics for ODI-SR task. Extensive experimental results demonstrate that our LAU-Net+ achieves state-of-the-art results on ODI-SR both quantitatively and qualitatively on various ODI datasets.

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