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Indoor Depth Estimation from Single Spherical Images

机译:从单个球面图像估计室内深度

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In this paper we propose a framework for inferring depth from a single spherical image, which can be coupled to any generic planar image monocular depth estimation algorithm. It consists of first inferring depth from overlapping planar patches extracted from the spherical image, and then using a regularized minimization scheme to stitch the patches back to the sphere. We test three state-of-the-art convolutional neural network (CNN)-based methodologies as baseline methods, and for all of them the proposed approach presented better results than applying the CNN directly to the equirectangular projection and to disjoint sections of the sphere according to the scale-invariant mean squared error (SIMSE) metric.
机译:在本文中,我们提出了一个从单个球面图像推断深度的框架,该框架可以与任何通用的平面图像单眼深度估计算法耦合。它包括首先根据从球面图像提取的重叠平面补丁推断深度,然后使用规则化的最小化方案将补丁拼接回球体。我们测试了三种基于最先进的卷积神经网络(CNN)的方法作为基准方法,对于所有这些方法,与将CNN直接应用于等角投影和球体的不相交部分相比,所提出的方法具有更好的结果根据尺度不变均方误差(SIMSE)度量。

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