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Convex Global 3D Registration with Lagrangian Duality

机译:凸显全球3D注册与拉格朗日二元性

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The registration of 3D models by a Euclidean transformation is a fundamental task at the core of many application in computer vision. This problem is non-convex due to the presence of rotational constraints, making traditional local optimization methods prone to getting stuck in local minima. This paper addresses finding the globally optimal transformation in various 3D registration problems by a unified formulation that integrates common geometric registration modalities (namely point-to-point, point-to-line and point-to-plane). This formulation renders the optimization problem independent of both the number and nature of the correspondences. The main novelty of our proposal is the introduction of a strengthened Lagrangian dual relaxation for this problem, which surpasses previous similar approaches [32] in effectiveness. In fact, even though with no theoretical guarantees, exhaustive empirical evaluation in both synthetic and real experiments always resulted on a tight relaxation that allowed to recover a guaranteed globally optimal solution by exploiting duality theory. Thus, our approach allows for effectively solving the 3D registration with global optimality guarantees while running at a fraction of the time for the state-of-the-art alternative [34], based on a more computationally intensive Branch and Bound method.
机译:通过欧几里德转换​​的3D模型注册是计算机愿景中许多应用程序的核心基本任务。由于存在旋转约束,这一问题是非凸的,使得传统的局部优化方法容易陷入局部最小值。本文通过整合公共几何配准模拟(即点对点,点对点,点对点)的统一配方,通过统一的制定找到各种3D注册问题的全局最佳变换。这种配方呈现出优化问题,与对应关系的数量和性质无关。我们提案的主要新颖性是引进加强拉格朗日的双重放松对此问题,其以前的类似方法[32]有效。事实上,即使没有理论担保,合成和实验的详尽经验评估始终导致紧张的放松,允许通过利用二元理论来恢复保证全球最佳解决方案。因此,我们的方法允许通过更新的强化分支和绑定方法在现有技术的时间的一小部分运行时,通过全局最优性保证有效地解决3D登记。

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