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Consensus Maximization Tree Search Revisited

机译:重新签订共识最大化树搜索

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Consensus maximization is widely used for robust fitting in computer vision. However, solving it exactly, i.e., finding the globally optimal solution, is intractable. A* tree search, which has been shown to be fixed-parameter tractable, is one of the most efficient exact methods, though it is still limited to small inputs. We make two key contributions towards improving A* tree search. First, we show that the consensus maximization tree structure used previously actually contains paths that connect nodes at both adjacent and non-adjacent levels. Crucially, paths connecting non-adjacent levels are redundant for tree search, but they were not avoided previously. We propose a new acceleration strategy that avoids such redundant paths. In the second contribution, we show that the existing branch pruning technique also deteriorates quickly with the problem dimension. We then propose a new branch pruning technique that is less dimension-sensitive to address this issue. Experiments show that both new techniques can significantly accelerate A* tree search, making it reasonably efficient on inputs that were previously out of reach. Demo code is available at https://github.com/ZhipengCai/MaxConTreeSearch.
机译:共识最大化广泛用于计算机视觉中的鲁棒配件。然而,确切地说,即找到全球最佳解决方案,是棘手的。 A *树搜索已被证明是固定参数易易的,是最有效的精确方法之一,但它仍然仅限于小输入。我们对改进*树搜索进行两个关键贡献。首先,我们表明,先前使用的共识最大化树结构实际上包含连接在相邻和非相邻级别的节点的路径。至关重要,连接非相邻电平的路径对于树搜索是多余的,但之前不避免它们。我们提出了一种新的加速策略,避免了这种冗余路径。在第二贡献中,我们表明现有的分支修剪技术也与问题尺寸快速恶化。然后,我们提出了一种新的分支修剪技术,对解决这个问题的维度敏感程度较小。实验表明,两种新技术都可以显着加速*树搜索,使其在以前遥不可及的输入上具有合理效率。 Demo代码可在https://github.com/zhipengcai/maxContresearch中获得。

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