首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Robust hierarchical structure from motion for large-scale unstructured image sets
【24h】

Robust hierarchical structure from motion for large-scale unstructured image sets

机译:来自大规模非结构化图像集的运动的强大分层结构

获取原文
获取原文并翻译 | 示例
       

摘要

Structure from Motion (SfM) is key to mixed computer vision and photogrammetry applications. However, the fast-growing needs for large-scale SfM bring challenges to current SfM solutions. Unlike traditional global and incremental SfM solutions, hierarchical SfM approaches demonstrate promising potential in effectively reconstructing large-scale image sets by dividing the image set into multiple image clusters, reconstructing each cluster separately, and gradually merging partial models into a complete model. However, current hierarchical SfM approaches still suffer from the following problems: accurate image clustering without ancillary information; automatic quality evaluation of each reconstruction unit and unreliable partial reconstruction removal; effective and efficient reconstruction of each image cluster; robust and accurate cluster merging considering the merging order and the handling of images taken with the same camera but divided into different clusters. These unstable factors limit the robustness and accuracy of hierarchical SfM approaches on different unstructured image sets.To systematically improve the performance of hierarchical SfM, we propose a novel robust hierarchical structure from motion (RHSfM) method for large-scale image sets, which does not rely on any additional information, such as Global Positioning System (GPS) and Inertial Navigation System (INS). (1) We develop an automatic image clustering method based on image correlation and present a dynamic adjustment strategy, obtaining reliable image clustering results. (2) We remove the poor reconstructions by introducing multiple quality evaluation standards. (3) We put forward a fast incremental SfM algorithm that optimizes the image adding mode with an image pre-screening strategy and gets rid of the dependence by the proposed dynamic adjustment strategy. (4) We achieve accurate cluster merging by creating an optimal merging list and employing a stepwise global optimization strategy that merges structures first and then cameras. Significantly, the entire process is fully automated with only a few input parameters, and the final result is not sensitive to these parameters.We verify our method on various real image sets that cover different image conditions, different scenes, and different image scales, especially two large-scale image sets with 121,506 and 153,396 images, respectively. The experimental results reveal that our approach outperforms the state-of-the-art SfM systems Colmap, 3DF Samantha, and Metashape in terms of robustness, accuracy, and efficiency. In particular, only our method successfully reconstructed all the seven challenging datasets. For the five datasets that the other systems can also reconstruct, our method obtains the highest accuracy, which is 25 percent better than the best result of the comparable methods on average; for the remaining two datasets, the accuracy of our method is higher than 0.75 pixels. Moreover, the efficiency of our method is about 18, 4.85, and 0.25 times faster than Colmap, 3DF Samantha, and Metashape averagely on the experimental image sets, respectively. After all, our contribution provides a comprehensive and practical solution for large-scale SfM.
机译:来自运动(SFM)的结构是混合计算机视觉和摄影测量应用的关键。然而,对大规模SFM的快速增长需求为当前的SFM解决方案带来挑战。与传统的全局和增量SFM解决方案不同,分层SFM方法通过将图像分成多个图像集群将图像分开重建,并将部分模型分别重建为完整的模型,证明了在有效地重建大规模图像集中的有效潜力。但是,当前的分层SFM方法仍然存在以下问题:无辅助信息的准确图像聚类;每个重建单元的自动质量评估和不可靠的部分重建去除;对每个图像集群的有效和有效的重建;考虑合并顺序和使用相同相机拍摄的图像的鲁棒和准确的群集合并,但分为不同的簇。这些不稳定的因素限制了不同非结构化图像集上的分层SFM方法的稳健性和准确性。系统地提高了分层SFM的性能,我们提出了一种从Motion(RHSFM)方法的新颖的鲁棒层次结构,用于大规模图像集,这不是依赖于任何附加信息,例如全球定位系统(GPS)和惯性导航系统(INS)。 (1)我们通过基于图像相关性的自动图像聚类方法,并呈现动态调整策略,获得可靠的图像聚类结果。 (2)我们通过引入多种质量评估标准来消除糟糕的重建。 (3)我们提出了一种快速增量的SFM算法,可以通过图像预筛选策略优化图像添加模式,并通过所提出的动态调整策略摆脱依赖。 (4)我们通过创建最佳合并列表来实现准确的群集合并,并采用逐步全局优化策略,将结构合并结构,然后是相机。值得注意的是,整个过程只有几个输入参数完全自动化,最终结果对这些参数不敏感。我们验证了我们在涵盖不同图像条件,不同场景和不同图像尺度的各种真实图像集上的方法两个大型图像集,分别具有121,506和153,396个图像。实验结果表明,我们的方法在鲁棒性,准确性和效率方面优于最先进的SFM系统Colmap,3DF Samantha和Metashape。特别是,只有我们的方法成功地重建了所有七个具有挑战性的数据集。对于其他系统还可以重建的五个数据集,我们的方法获得最高精度,比平均可比方法的最佳结果更好的25%;对于剩余的两个数据集,我们的方法的准确性高于0.75像素。此外,我们的方法的效率约为18,4.85,分别比Colmap,3DF Samantha和Metashape更快地速度为约18,4.85和0.25倍。毕竟,我们的贡献为大规模的SFM提供了全面而实用的解决方案。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号