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Bundle block adjustment of large-scale remote sensing data with Block-based Sparse Matrix Compression combined with Preconditioned Conjugate Gradient

机译:基于块的稀疏矩阵压缩与预处理共轭梯度相结合的大规模遥感数据的捆绑块调整

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摘要

In recent years, new platforms and sensors in photogrammetry, remote sensing and computer vision areas have become available, such as Unmanned Aircraft Vehicles (UAV), oblique camera systems, common digital cameras and even mobile phone cameras. Images collected by all these kinds of sensors could be used as remote sensing data sources. These sensors can obtain large-scale remote sensing data which consist of a great number of images. Bundle block adjustment of large-scale data with conventional algorithm is very time and space (memory) consuming due to the super large normal matrix arising from large-scale data. In this paper, an efficient Block-based Sparse Matrix Compression (BSMC) method combined with the Preconditioned Conjugate Gradient (PCG) algorithm is chosen to develop a stable and efficient bundle block adjustment system in order to deal with the large-scale remote sensing data. The main contribution of this work is the BSMC-based PCG algorithm which is more efficient in time and memory than the traditional algorithm without compromising the accuracy. Totally 8 datasets of real data are used to test our proposed method. Preliminary results have shown that the BSMC method can efficiently decrease the time and memory requirement of large-scale data. (C) 2016 Elsevier Ltd. All rights reserved.
机译:近年来,摄影测量,遥感和计算机视觉领域的新平台和传感器已经问世,例如无人飞行器(UAV),斜置摄像头系统,普通数码相机甚至手机摄像头。所有这些类型的传感器收集的图像都可以用作遥感数据源。这些传感器可以获得包含大量图像的大规模遥感数据。由于大规模数据产生的超大正态矩阵,使用常规算法对大规模数据进行捆绑块调整非常耗时和占用空间(内存)。本文选择一种有效的基于块的稀疏矩阵压缩(BSMC)方法与预处理共轭梯度(PCG)算法相结合来开发稳定高效的束块调整系统,以处理大规模遥感数据。这项工作的主要贡献是基于BSMC的PCG算法,该算法在时间和内存方面比传统算法更高效,而且不会影响精度。总共使用8个真实数据集来测试我们提出的方法。初步结果表明,BSMC方法可以有效地减少大规模数据的时间和内存需求。 (C)2016 Elsevier Ltd.保留所有权利。

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