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A Sparse Branch and Bound Optimization of Noisy Weighted DAG Modification Under Constraints: A Method for Monocular Data Association to Multiple Laser Planes

机译:约束下噪声加权DAG修改的稀疏分支和绑定优化:一种单眼数据关联与多激光刨的方法

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摘要

The line segments of multiple (and nearly parallel) planar laser sources appearing in monocular video are objectively associated to their respective laser sources. Such association is a precursor to 3D surface digitization where each laser plane develops a 3D surface. In this work, the detected laser line segments are modeled as a weighted directed acyclic graph (wDAG), in which the graph nodes represent the line segments and their maximum path hopes from any source node represents the laser source label. However, due to noise and occlusions, the structure of the wDAG will normally vary from that expected in the ideal cases. Furthermore, it is essential to robustness to incorporate the association information of the previous frames in the new frame associations. The proposed work objectively modifies the current frame’s wDAG under these constraints so the resulting wDAG becomes in an appropriate structure for the labeling of the detected line segments. Branch and bound (BnB) optimization has been a good choice for global optimization of combinatorial problems. Rather than approaching the optimization as a pure (or full) combinatorial problem, the proposed prioritizations of the branch modification actions are nearly optimal. The high priority actions will very likely lead to an optimal modification. This aspect is exploited by the proposed sparse variant of BnB (SBnB) optimization. It significantly reduces the number of the branches to be considered, in addition to those contributed by the bounding part of the BnB optimization. The proposed approach was tested on numerous monocular videos and plausible association results were efficiently achieved.
机译:出现在单眼视频中出现的多个(近平行)的平面激光源的线段是客观地与它们各自的激光源相关联。这种关联是3D表面数字化的前体,其中每个激光器形成3D表面。在该工作中,检测到的激光线段被建模为加权定向的非循环图(WDAG),其中曲线节点表示线段,并且它们从任何源节点的最大路径希望表示激光源标签。然而,由于噪声和闭塞,WDAG的结构通常因理想情况而预期的。此外,对新帧关联中的先前帧的关联信息必须鲁棒性是必要的。所提出的工作客观地修改了当前帧的WDAG在这些约束下,使得所得到的WDAG变成适当的结构,用于标记检测到的线段。分支机构和绑定(BNB)优化是全球优化组合问题的良好选择。而不是将优化作为纯(或完整的)组合问题而不是接近优化,所提出的分支修改动作的优先考虑几乎是最佳的。高优先级行动可能会导致最佳修改。通过BNB(SBNB)优化的所提出的稀疏变体利用该方面。除了由BNB优化的边界部分提供的贡献之外,它还显着减少了所考虑的分支的数量。拟议的方法在许多单眼视频上进行了测试,有效地实现了合理的关联结果。

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