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P~2Net: Patch-Match and Plane-Regularization for Unsupervised Indoor Depth Estimation

机译:P〜2net:无监督室内深度估计的补丁匹配和平面正规化

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This paper tackles the unsupervised depth estimation task in indoor environments. The task is extremely challenging because of the vast areas of non-texture regions in these scenes. These areas could overwhelm the optimization process in the commonly used unsupervised depth estimation framework proposed for outdoor environments. However, even when those regions are masked out, the performance is still unsatisfactory. In this paper, we argue that the poor performance suffers from the non-discriminative point-based matching. To this end, we propose P~2Net. We first extract points with large local gradients and adopt patches centered at each point as its representation. Multiview consistency loss is then defined over patches. This operation significantly improves the robustness of the network training. Furthermore, because those textureless regions in indoor scenes (e.g., wall, floor, roof, etc.) usually correspond to planar regions, we propose to leverage superpixels as a plane prior. We enforce the predicted depth to be well fitted by a plane within each superpixel. Extensive experiments on NYUv2 and ScanNet show that our P~2Net outperforms existing approaches by a large margin.
机译:本文在室内环境中解决了无监督的深度估计任务。由于这些场景中的非纹理区域的广大领域,这项任务非常具有挑战性。这些区域可能压倒普通使用的无监督深度估计框架中的优化过程,提出为户外环境。然而,即使这些区域被屏蔽,性能仍然不令人满意。在本文中,我们认为表现不佳遭受非歧视点的匹配。为此,我们提出了p〜2net。我们首先提取具有大型本地梯度的点,并采用以每个点为中心的贴片作为其表示。然后在修补程序上定义多视图一致性损耗。该操作显着提高了网络培训的稳健性。此外,因为室内场景中的那些造影区(例如,墙壁,地板,屋顶等)通常对应于平面区域,所以我们建议在先前将超像素熔化为平面。我们强制执行预测的深度,以便在每个超像素内的平面均匀。对NYUV2和SCANNET的广泛实验表明我们的P〜2NET优于现有的现有方法。

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