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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Efficient structure from motion for oblique UAV images based on maximal spanning tree expansion
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Efficient structure from motion for oblique UAV images based on maximal spanning tree expansion

机译:基于最大生成树展开的倾斜无人机图像的运动有效结构

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The primary contribution of this paper is an efficient Structure from Motion (SfM) solution for oblique unmanned aerial vehicle (UAV) images. First, an algorithm, considering spatial relationship constraints between image footprints, is designed for match pair selection with the assistance of UAV flight control data and oblique camera mounting angles. Second, a topological connection network (TCN), represented by an undirected weighted graph, is constructed from initial match pairs, which encodes the overlap areas and intersection angles into edge weights. Then, an algorithm, termed MST-Expansion, is proposed to extract the match graph from the TCN, where the TCN is first simplified by a maximum spanning tree (MST). By further analysis of the local structure in the MST, expansion operations are performed on the vertices of the MST for match graph enhancement, which is achieved by introducing critical connections in the expansion directions. Finally, guided by the match graph, an efficient SfM is proposed. Under extensive analysis and comparison, its performance is verified by using three oblique UAV datasets captured with different multi-camera systems. Experimental results demonstrate that the efficiency of image matching is improved, with speedup ratios ranging from 19 to 35, and competitive orientation accuracy is achieved from both relative bundle adjustment (BA) without GCPs (Ground Control Points) and absolute BA with GCPs. At the same time, images in the three datasets are successfully oriented. For the orientation of oblique UAV images, the proposed method can be a more efficient solution. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:本文的主要贡献是一种有效的“运动结构”(SfM)解决方案,用于解决倾斜无人机的图像。首先,考虑无人机图像的空间关系约束,设计了一种算法,借助无人机飞行控制数据和倾斜的摄像机安装角度进行匹配对选择。其次,由初始匹配对构造由无向加权图表示的拓扑连接网络(TCN),该匹配对将重叠区域和相交角编码为边缘权重。然后,提出了一种称为MST扩展的算法,用于从TCN中提取匹配图,其中首先通过最大生成树(MST)简化TCN。通过进一步分析MST中的局部结构,对MST的顶点执行扩展操作以增强匹配图,这是通过在扩展方向上引入关键连接来实现的。最后,在匹配图的指导下,提出了一种有效的SfM。在广泛的分析和比较下,通过使用三个由不同的多相机系统捕获的倾斜无人机数据集来验证其性能。实验结果表明,图像匹配的效率得到了提高,加速比在19到35之间,并且从没有GCP(地面控制点)的相对束调整(BA)和带有GCP的绝对BA两者都获得了竞争性的定位精度。同时,成功定位了三个数据集中的图像。对于倾斜的无人机图像的定向,所提出的方法可以是更有效的解决方案。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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