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Spatio-Temporal Distortion Aware Omnidirectional Video Super-Resolution

Hongyu An
Xinfeng Zhang
Shijie Zhao
Ruiqin Xiong
Ruiqin Xiong
Abstract

Omnidirectional video (ODV) provides an immersive visual experience and is widely utilized in virtual reality and augmented reality. However, restricted capturing devices and transmission bandwidth lead to low-resolution ODVs. Video super-resolution (SR) is proposed to enhance resolution, but practical ODV spatial projection distortions and temporal flickering are not well addressed directly applying existing methods. To achieve better ODV-SR reconstruction, we propose a Spatio-Temporal Distortion Aware Network (STDAN) oriented to ODV characteristics. Specifically, a spatially continuous distortion modulation module is introduced to improve discrete projection distortions. Next, we design an interlaced multi-frame reconstruction mechanism to refine temporal consistency across frames. Furthermore, we incorporate latitude-saliency adaptive weights during training to concentrate on regions with higher texture complexity and human-watching interest. In general, we explore inference-free and real-world viewing matched strategies to provide an application-friendly method on a novel ODV-SR dataset with practical scenarios. Extensive experimental results demonstrate the superior performance of the proposed STDAN over state-of-the-art methods.

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@article{an2025_2410.11506,
  title={ Spatio-Temporal Distortion Aware Omnidirectional Video Super-Resolution },
  author={ Hongyu An and Xinfeng Zhang and Shijie Zhao and Li Zhang and Ruiqin Xiong },
  journal={arXiv preprint arXiv:2410.11506},
  year={ 2025 }
}
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