An Integer Linear Programming Model for View Selection on Overlapping Camera Clusters

Massimo Mauro, Hayko Riemenschneider, A. Signoroni, R. Leonardi, L. Gool
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引用次数: 15

Abstract

Multi-View Stereo (MVS) algorithms scale poorly on large image sets, and quickly become unfeasible to run on a single machine with limited memory. Typical solutions to lower the complexity include reducing the redundancy of the image set (view selection), and dividing the image set in groups to be processed independently (view clustering). A novel formulation for view selection is proposed here. We express the problem with an Integer Linear Programming (ILP) model, where cameras are modeled with binary variables, while the linear constraints enforce the completeness of the 3D reconstruction. The solution of the ILP leads to an optimal subset of selected cameras. As a second contribution, we integrate ILP camera selection with a view clustering approach which exploits Leveraged Affinity Propagation (LAP). LAP clustering can efficiently deal with large camera sets. We adapt the original algorithm so that it provides a set of overlapping clusters where the minimum and maximum sizes and the number of overlapping cameras can be specified. Evaluations on four different dataset show our solution provides significant complexity reductions and guarantees near-perfect coverage, making large reconstructions feasible even on a single machine.
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基于整数线性规划的重叠相机簇视图选择模型
多视图立体(MVS)算法在大型图像集上的可扩展性很差,并且很快就无法在内存有限的单个机器上运行。降低复杂性的典型解决方案包括减少图像集的冗余(视图选择)和将图像集分组独立处理(视图聚类)。本文提出了一种新的视图选择公式。我们用整数线性规划(ILP)模型来表达这个问题,其中相机用二进制变量建模,而线性约束强制三维重建的完整性。ILP的解可以得到所选相机的最优子集。作为第二个贡献,我们将ILP相机选择与利用杠杆亲和传播(LAP)的视图聚类方法集成在一起。LAP聚类可以有效地处理大型摄像机集。我们调整了原始算法,使其提供了一组重叠簇,其中可以指定最小和最大尺寸以及重叠相机的数量。对四个不同数据集的评估表明,我们的解决方案显著降低了复杂性,并保证了近乎完美的覆盖,即使在一台机器上也可以进行大型重建。
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