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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Depth-map completion for large indoor scene reconstruction
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Depth-map completion for large indoor scene reconstruction

机译:深度映射完成大型室内场景重建

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摘要

Traditional Multi View Stereo (MVS) algorithms are often difficult to deal with large-scale indoor scene reconstruction, due to the photo-consistency measurement errors in weak textured regions, which are commonly exist in indoor scenes. To solve this limitation, in this paper we proposed a point cloud completion strategy that combines learning-based depth-map completion and geometry-based consistency filtering to fill large-area missing in depth-maps. The proposed method takes nonuniform and noisy MVS depth-map as input, and completes each depth-map individually. In the completion process, we first complete depth-maps using learning based method, and then filter each depth-map using depth consistency validation with its neighboring depth-maps. This depth-map completion and geometric filtering steps are performed iteratively until the number of depth points is converged. Experiments on large-scale indoor scenes and benchmark MVS datasets demonstrate the effectiveness of the proposed methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:传统的多视图立体声(MVS)算法通常难以处理大规模的室内场景重建,因为弱纹理区域中的光态度测量误差,通常存在于室内场景中。为了解决这个限制,在本文中,我们提出了一个点云完成策略,它结合了基于学习的深度映射完成和基于几何的一致性滤波,以填补深度映射中的大面积丢失。该方法采用不均匀的和嘈杂的MVS深度图作为输入,并单独完成每个深度映射。在完成过程中,我们首先使用基于学习的方法完成深度映射,然后使用其邻近深度映射使用深度一致性验证过滤每个深度映射。迭代地执行该深度映射完成和几何滤波步骤,直到深度点的数量融合。大规模室内场景和基准MVS数据集的实验证明了所提出的方法的有效性。 (c)2019年elestvier有限公司保留所有权利。

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