Computer Vision and Pattern Recognition
Disparity Estimation Networks for Aerial and High-Resolution Satellite Images: A Review
Published on - Image Processing On Line
This article describes a generic bundle adjustment methodology for multi-view stereo pipelines for 3D reconstruction from high-resolution optical satellite imagery. The Rational Polynomial Camera (RPC) model of each input view is refined by composing it with a rotation that compensates errors related to the attitude angles encoding the satellite orientation. A set of tie points, derived from feature tracks detected across the input images, is used to find the optimal corrective rotations by minimization of the reprojection error. We evaluate the performance of our method using time series of SkySat acquisitions over two different areas of interest. As an internal evaluation metric we compute the standard deviation between corresponding height estimations derived from different stereo pairs, before and after the bundle adjustment correction. Lastly, the results are also compared to an alternative solution for multi-view stereo pipelines that eludes any explicit correction of the camera models by directly registering independent dense surface models.