Orthogonal corner detection from micro structures

P. Duraisamy, S. Jackson
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Abstract

This paper concerns orthogonal corner detection from small-scale features (micro-structures) in images, and its use in the registration of an unregistered aerial orthophoto with a LiDAR point cloud data. First, we classify the corners in the aerial and LiDAR images using a corner detection algorithm specifically adapted for orthogonal corner detection. Then we use a search algorithm to register the orthogonal corners from the orthophoto image over the LiDAR image. The search algorithm is tailored for the matchings of orthogonal corners, for which there may be many features in one image with no corresponding feature in the other, but for which there are several corresponding corner features which are highly localized in spatial coordinates. The search algorithm requires an initial coarse estimate of the registration homography in order to perform quickly. We use this method to register a LiDAR and an aerial image of a coastal region with several man-made buildings in the vicinity (and thus well-defined orthocorners). The methods of this experiment can be useful for registering the images from two different modalities, even from high altitude photographs. The experimental results show a high degree of accuracy in the shoreline registration can be attained. The algorithm gives a registration which matches the micro-structures with pixel level accuracy. This is in contrast to the coarse registration, which in our cases was computed from an estimate of the shorelines in the images, which has an error around 10-20 pixels.
微结构正交角检测
本文研究了图像中小尺度特征(微观结构)的正交角检测及其在未配准的航空正射影像与激光雷达点云数据的配准中的应用。首先,我们使用专门适用于正交角检测的角检测算法对航空和激光雷达图像中的角进行分类。然后使用搜索算法将正射影像的正交角配准到激光雷达图像上。该搜索算法是针对正交角的匹配而量身定制的,对于正交角的匹配,可能在一幅图像中有许多特征而在另一幅图像中没有相应的特征,但在空间坐标上有几个对应的角特征,这些角特征在空间坐标上是高度局部化的。搜索算法需要对配准单应性进行初步粗略估计,以便快速执行。我们使用这种方法注册了一个沿海地区的激光雷达和航空图像,附近有几座人造建筑(因此定义明确的正角)。本实验方法可用于两种不同模态图像的配准,甚至可用于高海拔照片的配准。实验结果表明,该方法可以获得较高的岸线配准精度。该算法给出了一种以像素级精度匹配微观结构的配准方法。这与粗配准相反,在我们的案例中,粗配准是根据图像中的海岸线估计计算的,其误差约为10-20像素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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