IEEE Trans Pattern Anal Mach Intell. 2015 Nov;37(11):2193-206. doi: 10.1109/TPAMI.2015.2404834.
We propose a method to detect changes in the geometry of a city using panoramic images captured by a car driving around the city. The proposed method can be used to significantly optimize the process of updating the 3D model of an urban environment that is changing over time, by restricting this process to only those areas where changes are detected. With this application in mind, we designed our algorithm to specifically detect only structural changes in the environment, ignoring any changes in its appearance, and ignoring also all the changes which are not relevant for update purposes such as cars, people etc. The approach also accounts for the challenges involved in a large scale application of change detection, such as inaccuracies in the input geometry, errors in the geo-location data of the images as well as the limited amount of information due to sparse imagery. We evaluated our approach on a small scale setup using high resolution, densely captured images and a large scale setup covering an entire city using instead the more realistic scenario of low resolution, sparsely captured images. A quantitative evaluation was also conducted for the large scale setup consisting of 14,000 images.
我们提出了一种使用汽车在城市中行驶时拍摄的全景图像来检测城市几何形状变化的方法。该方法可以通过仅在检测到变化的区域限制此过程,从而显著优化随时间变化的城市环境 3D 模型的更新过程。考虑到这种应用,我们专门设计了我们的算法来检测环境中的仅结构性变化,忽略任何外观变化,并且忽略与更新目的无关的所有变化,例如汽车、人员等。该方法还考虑了大规模应用变化检测所涉及的挑战,例如输入几何形状的不准确性、图像地理定位数据中的误差以及由于图像稀疏而导致的信息量有限。我们使用高分辨率、密集拍摄的图像在小规模设置上评估了我们的方法,并使用更现实的低分辨率、稀疏拍摄的图像的情况在大规模设置上评估了整个城市。还对包含 14000 张图像的大规模设置进行了定量评估。