Large-scale DSM registration via motion averaging

Ningli Xu, Rongjun Qin
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Abstract

Abstract. Generating wide-area digital surface models (DSMs) requires registering a large number of individual, and partially overlapped DSMs. This presents a challenging problem for a typical registration algorithm, since when a large number of observations from these multiple DSMs are considered, it may easily cause memory overflow. Sequential registration algorithms, although can significantly reduce the computation, are especially vulnerable for small overlapped pairs, leading to a large error accumulation. In this work, we propose a novel solution that builds the DSM registration task as a motion averaging problem: pair-wise DSMs are registered to build a scene graph, with edges representing relative poses between DSMs. Specifically, based on the grid structure of the large DSM, the pair-wise registration is performed using a novel nearest neighbor search method. We show that the scene graph can be optimized via an extremely fast motion average algorithm with O(N) complexity (N refers to the number of images). Evaluation of high-resolution satellite-derived DSM demonstrates significant improvement in computation and accuracy.
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通过运动平均进行大规模 DSM 注册
摘要生成广域数字地表模型(DSM)需要注册大量独立且部分重叠的 DSM。这对典型的注册算法来说是一个具有挑战性的问题,因为当考虑这些多个 DSM 的大量观测数据时,很容易造成内存溢出。顺序配准算法虽然可以大大减少计算量,但对于小的重叠对来说尤其脆弱,会导致大量误差累积。在这项工作中,我们提出了一种新颖的解决方案,将 DSM 注册任务构建为一个运动平均问题:成对的 DSM 被注册以构建一个场景图,其边缘代表 DSM 之间的相对姿势。具体来说,基于大型 DSM 的网格结构,使用一种新颖的近邻搜索方法进行配对注册。我们的研究表明,场景图可以通过一种极快的运动平均算法进行优化,其复杂度为 O(N)(N 指图像数)。对高分辨率卫星衍生 DSM 的评估表明,该方法在计算和精度方面都有显著提高。
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