Joint Reconstruction and Registration of a Deformable Planar Surface Observed by a 3D Sensor

U. Castellani, V. Gay-Bellile, A. Bartoli
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引用次数: 10

Abstract

We address the problem of reconstruction and registration of a deforming 3D surface observed by some 3D sensor giving a cloud of 3D points at each time instant. This problem is difficult since the basic data term does not provide enough constraints. We bring two main contributions. First, we examine a set of data and penalty terms that make the problem well-posed. The most important terms we introduce are the non- extensibility penalty and the attraction to boundary shape. Second, we show how the error function combining all these terms can be efficiently minimized with the Levenberg-Marquardt algorithm and sparse matrices. We report convincing results for challenging datasets coming from different kinds of 3D sensors. The algorithm is robust to missing and erroneous data points, and to spurious boundary detection.
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三维传感器观测可变形平面的关节重建与配准
我们解决了三维传感器观测到的三维变形表面的重建和配准问题,给出了每个时刻的三维点云。这个问题很困难,因为基本数据项没有提供足够的约束。我们带来了两个主要贡献。首先,我们检查了一组数据和惩罚条款,这些数据和惩罚条款使问题具有良好的立足点。我们引入的最重要的术语是不可扩展性惩罚和边界形状吸引。其次,我们展示了如何使用Levenberg-Marquardt算法和稀疏矩阵有效地最小化组合所有这些项的误差函数。我们报告了来自不同类型3D传感器的具有挑战性的数据集的令人信服的结果。该算法对缺失点、错误点和伪边界检测具有较强的鲁棒性。
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