论文标题
鱼眼:延伸鱼眼镜头的高度支出
FisheyeEX: Polar Outpainting for Extending the FoV of Fisheye Lens
论文作者
论文摘要
Fisheye镜头由于其广泛的视野(FOV)而增加了计算摄影和辅助驾驶的应用。但是,鱼眼图像通常包含其成像模型引起的无效黑色区域。在本文中,我们提出了一种鱼眼方法,该方法通过超越无效的地区来扩展鱼眼镜头的FOV,从而改善了被捕获的场景的完整性。与矩形和未发生的图像相比,Fisheye图像支出面临两个挑战:不规则的绘画区域和失真合成。在观察鱼眼图像的径向对称性时,我们首先提出了一种极地支出策略,以推断从中心到外部区域的相干语义。这样的支出方式考虑了径向失真和圆边界的分布模式,从而提高了更合理的完成方向。对于失真合成,我们提出了一个螺旋失真感知的感知模块,其中学习路径与鱼眼图像的扭曲保持一致。随后,场景修订模块将生成的像素重新安排与估计的失真相匹配以匹配鱼眼图像,从而扩展了FOV。在实验中,我们在三个流行的户外数据集上评估了拟议的Fisheeex:CityScapes,BDD100K和Kitti,以及一个真实的Fisheye图像数据集。结果表明,我们的方法极大地胜过最先进的方法,超出原始鱼眼图像的内容多约27%。
Fisheye lens gains increasing applications in computational photography and assisted driving because of its wide field of view (FoV). However, the fisheye image generally contains invalid black regions induced by its imaging model. In this paper, we present a FisheyeEX method that extends the FoV of the fisheye lens by outpainting the invalid regions, improving the integrity of captured scenes. Compared with the rectangle and undistorted image, there are two challenges for fisheye image outpainting: irregular painting regions and distortion synthesis. Observing the radial symmetry of the fisheye image, we first propose a polar outpainting strategy to extrapolate the coherent semantics from the center to the outside region. Such an outpainting manner considers the distribution pattern of radial distortion and the circle boundary, boosting a more reasonable completion direction. For the distortion synthesis, we propose a spiral distortion-aware perception module, in which the learning path keeps consistent with the distortion prior of the fisheye image. Subsequently, a scene revision module rearranges the generated pixels with the estimated distortion to match the fisheye image, thus extending the FoV. In the experiment, we evaluate the proposed FisheyeEX on three popular outdoor datasets: Cityscapes, BDD100k, and KITTI, and one real-world fisheye image dataset. The results demonstrate that our approach significantly outperforms the state-of-the-art methods, gaining around 27% more content beyond the original fisheye image.