A semi-automatic tool to georeference historical landscape images

N. Blanc, T. Produit, J. Ingensand
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引用次数: 6

Abstract

Smapshot is a web-based participatory virtual globe where users can georeference historical images of the landscape by clicking a minimum of six well identifiable correspondence points between the image and a 3D virtual globe. The images database is expected to grow exponentially. In a near future, the work of the web users will no longer be enough. To tackle this issue, we developed a semi-automatic process to georeference images. The volunteers will be shown only images having a maximum number of neighbour images in the matching graph. These neighbour images are the ones with which they share some overlay. This overlap is detected using the SIFT algorithm in a pairewise matching process. For an image pair made of a reference image with a known pose and a query image we want to georeference, we extracted the 3D world coordinates of the tie points from a digital elevation model. Then, by running a perspective-n-point algorithm after having geometrically tested the resulting homography between the two images, we compute the 6 degree of freedom pose, i.e. the position (X,Y,Z) and orientation (azimuth, tilt and roll angles) of the query image. The query image then becomes a reference and the georeference computation can be propagated more deeply in the graph structure.
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一个半自动工具,以地理参考历史景观图像
Smapshot是一个基于网络的参与式虚拟地球仪,用户可以通过点击图像和3D虚拟地球仪之间至少六个可识别的对应点来参考景观的历史图像。预计图像数据库将呈指数级增长。在不久的将来,网络用户的工作将不再足够。为了解决这个问题,我们开发了一个半自动的过程来参考图像。志愿者只会看到匹配图中相邻图像数量最多的图像。这些相邻的图像与它们共享一些覆盖。使用SIFT算法在成对匹配过程中检测这种重叠。对于由已知姿态的参考图像和想要参考的查询图像组成的图像对,我们从数字高程模型中提取连接点的三维世界坐标。然后,在对两幅图像之间的结果进行几何测试后,通过运行透视-n-点算法,我们计算6个自由度的姿态,即查询图像的位置(X,Y,Z)和方向(方位角,倾斜角和滚动角)。然后查询图像成为一个参考,地理参考计算可以在图结构中更深入地传播。
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