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Omnidirectional stereo depth estimation based on spherical deep network

机译:基于球面深网络的全向立体深度估计

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Omnidirectional depth estimation is an emerging research topic and has received significant attention in recent years. However, the existing methods were developed based on the theory of planar stereo matching; and introduce the nonlinear epipolar constraint and significant distortions of re-projections. In this paper, we propose a novel approach that use spherical CNNs and the epipolar constraint on sphere for omnidirectional depth estimation. We discuss the epipolar constraint for spherical stereo imaging and convert the nonlinear constraint on a planar projection to the linear constraint on a sphere. We then propose a Spherical Convolution Residual Network (SCRN) for omnidirectional depth estimation via the spherical linear epipolar constraint. The input equirectangular projection (ERP) images are sampled to spherical meshes and fed into SCRN to calculate spherical depth maps. For 2D visualization, we design a Planar Refinement Network (PRN) and adopt the cascade learning scheme to improve the accuracy of depth maps. This scheme reduces the errors caused by projection, interpolation, and the limitation of spherical representation. The experiment shows that our full scheme Cascade Spherical Depth Network (CSDNet) results in more accurate and detailed depth maps with lower errors, as compared to recent seminal works. Our approach yields the comparable performance to the other state-of-the-art works on the omnidirectional stereo datasets with less number of parameters. The effectiveness of the spherical network and the cascade learning scheme is validated, and the influence of spherical sampling density is also discussed. (c) 2021 Elsevier B.V. All rights reserved.
机译:全向深度估计是一个新兴的研究主题,近年来得到了重大关注。然而,现有方法是基于平面立体匹配理论开发的;并介绍非线性末极约束和重新投影的重大扭曲。在本文中,我们提出了一种新颖的方法,该方法使用球形CNN和用于全点深度估计的球体上的末极约束。我们讨论了球形立体化成像的末端约束,并将非线性约束转换为球体上线性约束的平面投影。然后,我们提出了一种通过球面线性eMipolar约束来提出用于全向深度估计的球形卷积残余网络(SCRN)。输入互连投影(ERP)图像被采样以球形网格,并进入SCRN以计算球面深度图。对于2D可视化,我们设计平面细化网络(PRN)并采用级联学习方案来提高深度图的准确性。该方案减少了由投影,插值和球面表示的限制引起的误差。该实验表明,与最近的精彩作品相比,我们的完整方案级联球面深度网络(CSDNET)导致更准确且详细的深度映射,误差较低。我们的方法在具有较少数量的参数上的全向立体声数据集中对其他最先进的工作产生了相当的性能。验证了球形网络和级联学习方案的有效性,还讨论了球形采样密度的影响。 (c)2021 elestvier b.v.保留所有权利。

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