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Cost Volume Pyramid Based Depth Inference for Multi-View Stereo

机译:基于成本量金字塔的多视图立体声深度推断

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We propose a cost volume-based neural network for depth inference from multi-view images. We demonstrate that building a cost volume pyramid in a coarse-to-fine manner instead of constructing a cost volume at a fixed resolution leads to a compact, lightweight network and allows us inferring high resolution depth maps to achieve better reconstruction results. To this end, we first build a cost volume based on uniform sampling of fronto-parallel planes across the entire depth range at the coarsest resolution of an image. Then, given current depth estimate, we construct new cost volumes iteratively on the pixelwise depth residual to perform depth map refinement. While sharing similar insight with Point-MVSNet as predicting and refining depth iteratively, we show that working on cost volume pyramid can lead to a more compact, yet efficient network structure compared with the Point-MVSNet on 3D points. We further provide detailed analyses of the relation between (residual) depth sampling and image resolution, which serves as a principle for building compact cost volume pyramid. Experimental results on benchmark datasets show that our model can perform 6x faster and has similar performance as state-of-the-art methods. Code is available at https://github.com/JiayuYANG/CVP-MVSNet
机译:我们提出了一种基于成本量的神经网络,用于从多视图图像进行深度推断。我们证明,以粗糙到精细的方式构建成本量金字塔而不是以固定的分辨率构建成本量会导致紧凑,轻便的网络,并允许我们推断高分辨率深度图以获得更好的重建结果。为此,我们首先基于图像最粗分辨率下在整个深度范围内对正平行面的均匀采样来建立成本量。然后,在给定当前深度估计的情况下,我们在像素深度残差上迭代构造新的成本量,以进行深度图细化。在与Point-MVSNet共享相似的见解(以迭代方式预测和细化深度)的同时,我们表明,与在3D点上使用Point-MVSNet相比,在成本量金字塔上开展工作可以带来更紧凑,更有效的网络结构。我们进一步提供(残留)深度采样和图像分辨率之间关系的详细分析,这是构建紧凑的成本金字塔的原理。在基准数据集上的实验结果表明,我们的模型执行速度可以提高6倍,并且具有与最新方法类似的性能。可以在https://github.com/JiayuYANG/CVP-MVSNet上找到代码

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