The lack of adequate stereo coverage and where available, lengthy processing time, various artefacts, and unsatisfactory quality and complexity of automating the selection of the best set of processing parameters, have long been big barriers for large-area planetary 3D mapping. In this paper, we propose a deep learning-based solution, called MADNet (Multi-scale generative Adversarial u-net with Dense convolutional and up-projection blocks), that avoids or resolves all of the above issues. We demonstrate the wide applicability of this technique with the ExoMars Trace Gas Orbiter Colour and Stereo Surface Imaging System (CaSSIS) 4.6 m/pixel images on Mars. Only a single input image and a coarse global 3D reference are required, without knowin...
In computer vision, stereoscopy allows the three-dimensional reconstruction of a scene using two 2D ...
The ExoMars Trace Gas Orbiter (TGO)’s Colour and Stereo Surface Imaging System (CaSSIS) provides mul...
We present an enhanced High-Resolution Imaging Science Experiment (HiRISE) digital terrain model (D...
The lack of adequate stereo coverage and where available, lengthy processing time, vari-ous artefact...
International audienceThe lack of adequate stereo coverage and where available, lengthy processing t...
We demonstrate an end-to-end application of the in-house deep learning-based surface modelling syste...
International audienceThe High-Resolution Imaging Science Experiment (HiRISE) onboard the Mars Recon...
We introduce a novel ultra-high-resolution Digital TerrainModel (DTM) processing systemusing a combi...
We introduce a novel ultra-high-resolution Digital Terrain Model (DTM) processing system using a com...
We propose using coupled deep learning based super-resolution restoration (SRR) and single-image dig...
In computer vision, stereoscopy allows the three-dimensional reconstruction of a scene using two 2D ...
The ExoMars Trace Gas Orbiter (TGO)’s Colour and Stereo Surface Imaging System (CaSSIS) provides mul...
We present an enhanced High-Resolution Imaging Science Experiment (HiRISE) digital terrain model (D...
The lack of adequate stereo coverage and where available, lengthy processing time, vari-ous artefact...
International audienceThe lack of adequate stereo coverage and where available, lengthy processing t...
We demonstrate an end-to-end application of the in-house deep learning-based surface modelling syste...
International audienceThe High-Resolution Imaging Science Experiment (HiRISE) onboard the Mars Recon...
We introduce a novel ultra-high-resolution Digital TerrainModel (DTM) processing systemusing a combi...
We introduce a novel ultra-high-resolution Digital Terrain Model (DTM) processing system using a com...
We propose using coupled deep learning based super-resolution restoration (SRR) and single-image dig...
In computer vision, stereoscopy allows the three-dimensional reconstruction of a scene using two 2D ...
The ExoMars Trace Gas Orbiter (TGO)’s Colour and Stereo Surface Imaging System (CaSSIS) provides mul...
We present an enhanced High-Resolution Imaging Science Experiment (HiRISE) digital terrain model (D...