首页> 外文会议>International symposium on remote sensing;ISRS >MMS STREET-LEVEL IMAGE DENSE MATCHING
【24h】

MMS STREET-LEVEL IMAGE DENSE MATCHING

机译:MMS街头图像浓密配对

获取原文

摘要

High density 3D point clouds on the surfaces of buildings and roads can be obtained by dense matching of images taken by cameras installed on a mobile mapping system (MMS) along streets. These point clouds can be used for reconstruction of 3D city models with high level of detail (LoD), and also for mapping of street scenery etc. Plane-based rectification (PBR) uses projective transformation to rectify an image, and is usually used in photogrammetry. Nevertheless, it is not suitable for rectifying image pairs with photographic baseline parallel with the photographing direction. Instead, line-based rectification (LBR) might be adopted for rectifying the afore-mentioned images. This paper trying to improve the points cloud quality which generated from MMS image dense matching, by changing the epipolar rectification algorithm, increasing the redundant observation and integrating multi-image. The experiments are done by using the image dense matching software SURE developed by the Stuttgart University, Germany. Also 24 image sets taken on a MMS are adopted for tests. Their interior and exterior orientation data are determined by photo triangulation. Some tests are done by using three sets of images: 1 .image pairs with photographic baseline perpendicular to the photographing direction, 2. Image pairs with photographic baseline parallel with the photographing direction, 3.Multiple overlapping images including the 1st and 2nd sets. The point clouds determined by using these three sets with different rectification methods will be analyzed. It can be found out that there are some pros and cons among these sets, e.g. 1st set with PBR can get results with higher precision, and LBR can get more information when adding image pairs of the 2nd set, as the rate of successful matching is 43 % and 57% for the 1st and 3rd set, respectively.
机译:建筑物和道路表面上的高密度3D点云可通过密集匹配安装在沿街道的移动制图系统(MMS)上的摄像机拍摄的图像来获得。这些点云可用于重建具有高细节水平(LoD)的3D城市模型,以及用于绘制街道风光等。基于平面的校正(PBR)使用投影变换来校正图像,通常用于摄影测量法。然而,它不适用于校正具有与拍摄方向平行的拍摄基线的图像对。取而代之的是,可以采用基于行的校正(LBR)来校正上述图像。本文尝试通过改变对极整流算法,增加冗余观测值和整合多幅图像来提高MMS图像密集匹配所产生的点云质量。实验是通过使用德国斯图加特大学开发的图像密集匹配软件SURE进行的。还采用了在MMS上拍摄的24个图像集进行测试。它们的内部和外部方向数据由照片三角测量确定。通过使用三组图像进行一些测试:1.具有与摄影方向垂直的摄影基线的图像对; 2.具有与摄影方向平行的摄影基线的图像对; 3.包括第一组和第二组的多个重叠图像。将分析通过使用这三种集使用不同的校正方法确定的点云。可以发现,在这些集合中有一些优点和缺点,例如使用PBR的第一组可以获得更高的精度,而添加第二组的图像对时LBR可以获得更多的信息,因为第一组和第三组的成功匹配率分别为43%和57%。

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