Towards the Probabilistic Fusion of Learned Priors into Standard Pipelines for 3D Reconstruction
Tristan Laidlow, Jan Czarnowski, Andrea Nicastro, Ronald Clark, Stefan, Leutenegger

TL;DR
This paper introduces a probabilistic fusion method that combines learned depth priors and photometric consistency into a standard 3D reconstruction pipeline, improving depth map accuracy.
Contribution
It presents a novel approach to fuse neural network predicted probability distributions with traditional geometry-based methods for 3D reconstruction.
Findings
Fusion of probability volumes enhances depth estimation accuracy
Incorporating surface normals and occlusion boundaries improves results
Probabilistic fusion yields more robust 3D reconstructions
Abstract
The best way to combine the results of deep learning with standard 3D reconstruction pipelines remains an open problem. While systems that pass the output of traditional multi-view stereo approaches to a network for regularisation or refinement currently seem to get the best results, it may be preferable to treat deep neural networks as separate components whose results can be probabilistically fused into geometry-based systems. Unfortunately, the error models required to do this type of fusion are not well understood, with many different approaches being put forward. Recently, a few systems have achieved good results by having their networks predict probability distributions rather than single values. We propose using this approach to fuse a learned single-view depth prior into a standard 3D reconstruction system. Our system is capable of incrementally producing dense depth maps for…
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Taxonomy
TopicsAdvanced Vision and Imaging · Optical measurement and interference techniques · 3D Surveying and Cultural Heritage
