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L~2-SIFT: SIFT feature extraction and matching for large images in large-scale aerial photogrammetry

机译:L〜2-SIFT:大规模航空摄影测量中大型图像的SIFT特征提取和匹配

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摘要

The primary contribution of this paper is an efficient feature extraction and matching implementation for large images in large-scale aerial photogrammetry experiments. First, a Block-SIFT method is designed to overcome the memory limitation of SIFT for extracting and matching features from large photogrammet-ric images. For each pair of images, the original large image is split into blocks and the possible corresponding blocks in the other image are determined by pre-estimating the relative transformation between the two images. Because of the reduced memory requirement, features can be extracted and matched from the original images without down-sampling. Next, a red-black tree data structure is applied to create a feature relationship to reduce the search complexity when matching tie points. Meanwhile, tree key exchange and segment matching methods are proposed to match the tie points along-track and across-track. Finally, to evaluate the accuracy of the features extracted and matched from the proposed L~2-SIFT algorithm, a bundle adjustment with parallax angle feature parametrization (Paral-laxBA~1) is applied to obtain the Mean Square Error (MSE) of the feature reprojections, where the feature extraction and matching result is the only information used in the nonlinear optimisation system. Seven different experimental aerial photogrammetric datasets are used to demonstrate the efficiency and validity of the proposed algorithm. It is demonstrated that more than 33 million features can be extracted and matched from the Taian dataset with 737 images within 21 h using the L~2-SIFT algorithm. In addition, the ParallaxBA involving more than 2.7 million features and 6 million image points can easily converge to an MSE of 0.03874.
机译:本文的主要贡献是在大规模航空摄影测量实验中为大型图像提供了有效的特征提取和匹配实现。首先,设计了一种块SIFT方法来克服SIFT用于从大型摄影图像中提取和匹配特征的存储限制。对于每对图像,将原始的大图像分为多个块,并通过预先估计两个图像之间的相对变换来确定另一个图像中可能的相应块。由于减少了内存需求,因此可以从原始图像中提取和匹配特征,而无需进行下采样。接下来,应用红黑树数据结构来创建特征关系,以降低匹配联系点时的搜索复杂度。同时,提出了树密钥交换和分段匹配方法来匹配沿轨道和跨轨道的联系点。最后,为了评估从所提出的L〜2-SIFT算法中提取和匹配的特征的准确性,应用具有视差角特征参数化的束调整(Paral-laxBA〜1)来获得特征的均方误差(MSE)。特征重投影,其中特征提取和匹配结果是非线性优化系统中使用的唯一信息。使用七个不同的实验航空摄影测量数据集来证明所提出算法的效率和有效性。结果表明,使用L〜2-SIFT算法可以在21 h内从737个图像中提取和匹配超过3300万个特征。此外,包含超过270万个特征和600万个图像点的ParallaxBA可以轻松收敛到0.03874的MSE。

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  • 作者单位

    Institute of Remote Sensing and GIS, School of Earth and Space Science, Peking University, Beijing 100871, China,Centre for Autonomous Systems, Faculty of Engineering and Information Technology, University of Technology, Sydney, NSW 2007, Australia;

    Centre for Autonomous Systems, Faculty of Engineering and Information Technology, University of Technology, Sydney, NSW 2007, Australia;

    Centre for Autonomous Systems, Faculty of Engineering and Information Technology, University of Technology, Sydney, NSW 2007, Australia;

    Institute of Remote Sensing and GIS, School of Earth and Space Science, Peking University, Beijing 100871, China;

    Centre for Autonomous Systems, Faculty of Engineering and Information Technology, University of Technology, Sydney, NSW 2007, Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Aerial photogrammetry; Large-scale; SIFT; Feature extraction and matching; Bundle adjustment;

    机译:航空摄影测量;大规模;筛;特征提取和匹配;捆绑调整;

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