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Journal Article Deep learning-based 3D reconstruction from multiple images: A survey
Cited 5 time in scopus Share share facebook twitter linkedin kakaostory
Authors
Chuhua Wang, Md Alimoor Reza, Vibhas Vats, Yingnan Ju, Nikhil Thakurdesai, Yuchen Wang, David J. Crandall, Soon-heung Jung, Jeongil Seo
Issue Date
2024-09
Citation
Neurocomputing, v.597, pp.1-23
ISSN
0925-2312
Publisher
Elsevier BV
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1016/j.neucom.2024.128018
Abstract
Reconstructing the three-dimensional structure of a scene is a classic and fundamental problem in computer vision, but it has been revolutionized by recent advancements in deep machine learning. In this paper, we survey this rich and growing area. We divide the work into four main threads: 3D reconstruction from two calibrated images from a binocular camera; 3D reconstruction from more than two images taken by the same camera or more than two calibrated cameras; object-focused 3D reconstruction with relaxed camera calibration; and SLAM-based techniques. We summarize each approach along four salient dimensions: algorithmic and deep network characteristics, output representation, datasets, and quantitative comparisons among different methods. We also discuss key challenges and future directions.
KSP Keywords
3d reconstruction, Binocular camera, Camera Calibration, Computer Vision(CV), Deep machine learning, Different methods, Learning-based, Network characteristics, Three dimensional(3D), Three-dimensional structure, deep learning(DL)