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A comparison of dense matching algorithms for scaled surface reconstruction using stereo camera rigs

机译:使用立体摄影机装备进行比例缩放曲面的密集匹配算法比较

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Photogrammetric methods for dense 3D surface reconstruction are increasingly available to both professional and amateur users who have requirements that span a wide variety of applications. One of the key concerns in choosing an appropriate method is to understand the achievable accuracy and how choices made within the workflow can alter that outcome. In this paper we consider accuracy in two components: the ability to generate a correctly scaled 3D model; and the ability to automatically deliver a high quality data set that provides good agreement to a reference surface. The determination of scale information is particularly important, since a network of images usually only provides angle measurements and thus leads to unsealed geometry. A solution is the introduction of known distances in object space, such as base lines between camera stations or distances between control points. In order to avoid using known object distances, the method presented in this paper exploits a calibrated stereo camera utilizing the calibrated base line information from the camera pair as an observational based geometric constraint. The method provides distance information throughout the object volume by orbiting the object. In order to test the performance of this approach, four topical surface matching methods have been investigated to determine their ability to produce accurate, dense point clouds. The methods include two versions of Semi-Global Matching as well as MicMac and Patch-based Multi-View Stereo (PMVS). These methods are implemented on a set of stereo images captured from four carefully selected objects by using (1) an off-the-shelf low cost 3D camera and (2) a pair of Nikon D700 DSLR cameras rigidly mounted in close proximity to each other. Inter-comparisons demonstrate the subtle differences between each of these permutations. The point clouds are also compared to a dataset obtained with a Nikon MMD laser scanner. Finally, the established process of achieving accurate point clouds from images and known object space distances are compared with the presented strategies. Results from the matching demonstrate that if a good imaging network is provided, using a stereo camera and bundle adjustment with geometric constraints can effectively resolve the scale. Among the strategies for dense 3D reconstruction, using the presented method for solving the scale problem and PMVS on the images captured with two DSLR cameras resulted in a dense point cloud as accurate as the Nikon laser scanner dataset.
机译:专业和业余用户越来越需要用于密集3D表面重建的摄影测量方法,这些用户对多种应用程序都有不同的要求。选择合适方法的关键问题之一是了解可达到的准确性以及工作流程中的选择如何改变结果。在本文中,我们考虑了两个方面的准确性:生成正确缩放的3D模型的能力;自动提供高质量数据集的能力,该数据集与参考曲面之间具有良好的一致性。比例尺信息的确定尤其重要,因为图像网络通常仅提供角度测量值,从而导致未密封的几何形状。一种解决方案是在对象空间中引入已知距离,例如摄影机站之间的基线或控制点之间的距离。为了避免使用已知的物距,本文提出的方法利用了校准的立体摄像机,该摄像机使用了来自摄像机对的校准基准线信息作为基于观测的几何约束。该方法通过绕着物体旋转来提供整个物体体积内的距离信息。为了测试这种方法的性能,已经研究了四种局部表面匹配方法,以确定它们产生精确的密集点云的能力。这些方法包括两个版本的半全局匹配以及MicMac和基于修补程序的多视图立体声(PMVS)。通过使用(1)一台现成的低成本3D相机和(2)一对彼此紧紧安装的尼康D700 DSLR相机,可以对从四个精心选择的对象捕获的一组立体图像上实施这些方法。 。相互比较表明了这些排列之间的细微差异。点云也将与尼康MM​​D激光扫描仪获得的数据集进行比较。最后,将从图像和已知对象空间距离获得精确点云的已建立过程与所提出的策略进行了比较。匹配的结果表明,如果提供了良好的成像网络,则使用立体摄像机和具有几何约束的束调整可以有效地解决比例问题。在用于密集3D重建的策略中,使用所提出的方法解决比例问题和使用两台DSLR相机拍摄的图像上的PMVS导致密集点云的精确度与尼康激光扫描仪数据集相同。

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