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Incorporating scene priors to dense monocular mapping

机译:将场景先验纳入密集的单眼贴图

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This paper presents a dense monocular mapping algorithm that improves the accuracy of the state-of-the-art variational and multiview stereo methods by incorporating scene priors into its formulation. Most of the improvement of our proposal is in low-textured image regions and for low-parallax camera motions; two typical failure cases of multiview mapping. The specific priors we model are the planarity of homogeneous color regions, the repeating geometric primitives of the scene—that can be learned from data—and the Manhattan structure of indoor rooms. We evaluate the performance of our method in our own sequences and in the publicly available NYU dataset, emphasizing its strengths and weaknesses in different cases.
机译:本文提出了一种密集的单眼映射算法,该算法通过将场景先验合并到其公式中来提高最新的变分和多视图立体方法的准确性。我们建议的大部分改进是在低纹理图像区域和低视差相机运动中进行的;多视图映射的两种典型故障情况。我们建模的特定先验条件是均匀颜色区域的平面性,场景的重复几何图元(可以从数据中学习)以及室内房间的曼哈顿结构。我们在自己的序列和可公开获取的NYU数据集中评估了该方法的性能,强调了在不同情况下的优缺点。

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