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Deterministic Consensus Maximization with Biconvex Programming

机译:使用Biconvex编程的确定性共识最大化

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Consensus maximization is one of the most widely used robust fitting paradigms in computer vision, and the development of algorithms for consensus maximization is an active research topic. In this paper, we propose an efficient deterministic optimization algorithm for consensus maximization. Given an initial solution, our method conducts a deterministic search that forcibly increases the consensus of the initial solution. We show how each iteration of the update can be formulated as an instance of biconvex programming, which we solve efficiently using a novel biconvex optimization algorithm. In contrast to our algorithm, previous consensus improvement techniques rely on random sampling or relaxations of the objective function, which reduce their ability to significantly improve the initial consensus. In fact, on challenging instances, the previous techniques may even return a worse off solution. Comprehensive experiments show that our algorithm can consistently and greatly improve the quality of the initial solution, without substantial cost. (Matlab demo program is available in the supplementary material)
机译:共识最大化是计算机视觉中使用最广泛的鲁棒拟合范例之一,共识最大化算法的开发是一个活跃的研究主题。在本文中,我们提出了一种用于共识最大化的有效确定性优化算法。给定一个初始解决方案,我们的方法进行确定性搜索,以强制提高初始解决方案的共识。我们展示了如何将更新的每个迭代表示为双凸规划的一个实例,我们使用新颖的双凸优化算法有效地解决了该问题。与我们的算法相比,以前的共识改进技术依赖于目标函数的随机采样或松弛,这降低了它们显着改善初始共识的能力。实际上,在具有挑战性的情况下,以前的技术甚至可能返回更差的解决方案。全面的实验表明,我们的算法可以在不花费大量成本的情况下,始终如一地大大提高初始解决方案的质量。 (Matlab演示程序位于补充材料中)

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