CVIVMay 17, 2019

Automated 3D recovery from very high resolution multi-view satellite images

arXiv:1905.07475v233 citations
Originality Incremental advance
AI Analysis

This addresses the problem of generating accurate 3D surface models from satellite imagery for applications like mapping and urban planning, representing an incremental improvement over existing methods.

The paper tackles automated 3D reconstruction from high-resolution satellite images by developing a pipeline that fuses multiple depth maps with an adaptive median filter, achieving a 0.36-meter RMSE improvement in accuracy.

This paper presents an automated pipeline for processing multi-view satellite images to 3D digital surface models (DSM). The proposed pipeline performs automated geo-referencing and generates high-quality densely matched point clouds. In particular, a novel approach is developed that fuses multiple depth maps derived by stereo matching to generate high-quality 3D maps. By learning critical configurations of stereo pairs from sample LiDAR data, we rank the image pairs based on the proximity of the results to the sample data. Multiple depth maps derived from individual image pairs are fused with an adaptive 3D median filter that considers the image spectral similarities. We demonstrate that the proposed adaptive median filter generally delivers better results in general as compared to normal median filter, and achieved an accuracy of improvement of 0.36 meters RMSE in the best case. Results and analysis are introduced in detail.

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