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GROUND TRUTH GENERATION AND DISPARITY ESTIMATION FOR OPTICAL SATELLITE IMAGERY

M. Cournet, Emmanuelle Sarrazin, Loïc Dumas, Julien Michel, Jonathan Guinet, David Youssefi, Veronique Defonte, Q. Fardet

2020˜The œinternational archives of the photogrammetry, remote sensing and spatial information sciences/International archives of the photogrammetry, remote sensing and spatial information sciences27 citationsDOIOpen Access PDF

Abstract

Abstract. Several 3D reconstruction pipelines are being developed around the world for satellite imagery. Most of them implement their own versions of Semi-Global Matching, as an option for the matching step. However, deep learning based solutions already outperform every SGM derived algorithms on Kitti and Middlebury stereo datasets. But these deep learning based solutions need huge quantities of ground truths for training. This implies that the generation of ground truth stereo datasets, from satellite imagery and lidar, seems to be of great interest for the scientific community. It will aim at reducing the potential transfer learning difficulties, that could arise from a training done on datasets such as Middlebury or Kitti. In this work, we present a new ground truth generation pipeline. It produces stereo-rectified images and ground truth disparity maps, from satellite imagery and lidar. We also assess the rectification and the disparity accuracies of these outputs. We finally train a deep learning network on our preliminary ground truth dataset.

Topics & Concepts

Ground truthArtificial intelligencePipeline (software)Computer scienceSatelliteDeep learningSatellite imageryLidarMatching (statistics)Computer visionRemote sensingGeologyMathematicsEngineeringProgramming languageAerospace engineeringStatisticsAdvanced Vision and ImagingSatellite Image Processing and PhotogrammetryAdvanced Image and Video Retrieval Techniques
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