Graph Partition Based Bundle Adjustment for Structured Dataset

Yuanfan Xie, Lixin Fan, Yihong Wu
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引用次数: 1

Abstract

Bundle adjustment has been considered as one of the most important components in many visual tasks such as 3D reconstruction, photo grammetry, visual SLAM, etc. Unfortunately, both time and space complexity of this adjustment prevent it from being directly applied to large scale datasets. This paper presents a sub mapping method, which partitions a large scale dataset into disjointed subsets and adjusts them one by one or in parallel. Pair-wise sub maps are then "stitched" together by applying a similarity transformation. Both simulations and real applications show that our method scales well. Also some basic questions of this sub mapping method including map size, map fusion and global consistency are discussed.
基于图分区的结构化数据集束调整
束平差被认为是三维重建、摄影测量、视觉SLAM等许多视觉任务中最重要的组成部分之一。不幸的是,这种调整的时间和空间复杂性使其无法直接应用于大规模数据集。提出了一种子映射方法,该方法将大规模数据集划分为不相连的子集,并逐个或并行地进行调整。然后通过应用相似变换将成对子映射“缝合”在一起。仿真和实际应用表明,该方法具有良好的可扩展性。讨论了该子映射方法的一些基本问题,包括地图大小、地图融合和全局一致性。
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