基于图像的城市街道建模的相机轨迹恢复

F. Huang, A. Tsai, Meng-Tsan Li, Jui-Yang Tsai
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引用次数: 1

摘要

提出了一种基于图像的半自动城市街道建模方法,该方法以两类图像为输入。一个是感兴趣区域的正交航空图像,另一个是一组街景球形全景图像。本文重点研究了相机轨迹恢复精度的提高,这是两类图像源配准的关键。采用尺度不变特征变换特征检测和匹配方法,在每对连续全景图像之间识别对应的图像点。由于球面全景图像的宽视场和高图像记录频率,产生的匹配数量通常非常大。本文提出了一种对匹配项进行预处理的方法,取代了直接使用RANSAC算法进行匹配非常耗时的问题。我们声称,大多数不正确或不重要的匹配将被成功删除。几个真实世界的实验表明,我们的方法能够在估计相机外部参数方面达到更高的精度,从而导致更准确的相机轨迹恢复结果。
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Camera trajectory recovery for image-based city street modeling
A semi-automatic image-based approach for city street modeling was proposed, which takes two types of images as input. One is an orthogonal aerial image of the area of interest and the other is a set of street-view spherical panoramic images. This paper focuses on the accuracy enhancement of camera trajectory recovery, which is crucial in registering two types of image sources. Scale-invariant Feature Transform feature detection and matching methods were employed to identify corresponding image points between each pair of successive panoramic images. Due to the wide field-of-view of spherical panoramic images and high image recording frequency, the number of resultant matches is generally very large. Instead of directly applying RANSAC which is very time consuming, we proposed a method to preprocess those matches. We claim that the majority of incorrect or insignificant matches will be successfully removed. Several real-world experiments were conducted to demonstrate that our method is able to achieve higher accuracy at estimating camera extrinsic parameters, and would consequently lead to a more accurate camera trajectory recovery result.
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