面向全向图像超分辨率的纬度自适应升级网络

Xin Deng, Hao Wang, Mai Xu, Yichen Guo, Yuhang Song, Li Yang
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引用次数: 27

摘要

由于采集、存储和传输的限制,全向图像通常分辨率较低。传统的二维(2D)图像超分辨率方法对于球形odi并不有效,因为odi往往具有不均匀分布的像素密度和不同纬度的纹理复杂性。在这项工作中,我们提出了一种新的纬度自适应上尺度网络(law - net)用于ODI超分辨率,它允许不同纬度的像素采用不同的上尺度因子。具体来说,我们引入了一种拉普拉斯多级分离架构,将ODI划分为不同的纬度带,并利用不同的因子对ODI进行分层升级。此外,我们提出了一种具有纬度自适应奖励的深度强化学习方案,以自动选择不同纬度波段的最优升级因子。据我们所知,law - net是第一次尝试考虑ODI超分辨率的纬度差异。广泛的结果表明,我们的劳网显著提高了odi的超分辨率性能。代码可在https://github.com/wangh-allen/LAU-Net上获得。
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LAU-Net: Latitude Adaptive Upscaling Network for Omnidirectional Image Super-resolution
The omnidirectional images (ODIs) are usually at low-resolution, due to the constraints of collection, storage and transmission. The traditional two-dimensional (2D) image super-resolution methods are not effective for spherical ODIs, because ODIs tend to have non-uniformly distributed pixel density and varying texture complexity across latitudes. In this work, we propose a novel latitude adaptive upscaling network (LAU-Net) for ODI super-resolution, which allows pixels at different latitudes to adopt distinct upscaling factors. Specifically, we introduce a Laplacian multi-level separation architecture to split an ODI into different latitude bands, and hierarchically upscale them with different factors. In addition, we propose a deep reinforcement learning scheme with a latitude adaptive reward, in order to automatically select optimal upscaling factors for different latitude bands. To the best of our knowledge, LAU-Net is the first attempt to consider the latitude difference for ODI super-resolution. Extensive results demonstrate that our LAU-Net significantly advances the super-resolution performance for ODIs. Codes are available at https://github.com/wangh-allen/LAU-Net.
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