Overview of image-based 3D reconstruction technology

IF 1.9 4区 物理与天体物理 Q3 OPTICS Journal of the European Optical Society-Rapid Publications Pub Date : 2024-04-09 DOI:10.1051/jeos/2024018
yuandong niu
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Abstract

Three-dimensional(3D) reconstruction technology is the key technology to establish and express the objective world by using computer, and it is widely used in real 3D, automatic driving, aerospace, navigation and industrial robot applications. According to different principles, it is mainly divided into methods based on traditional multi-view geometry and methods based on deep learning. This paper introduces the above methods from the perspective of three-dimensional space representation. The feature extraction and stereo matching theory of traditional 3D reconstruction methods are the theoretical basis of 3D reconstruction methods based on deep learning, so the paper focuses on them. With the development of traditional 3D reconstruction methods and the development of deep learning related theories, the explicit deep learning 3D reconstruction method represented by MVSNet and the implicit 3D reconstruction method represented by NeRF have been gradually developed. At the same time, the dataset and evaluation indicators for 3D reconstruction were introduced. Finally, a summary of image based 3D reconstruction was provided. Deep networks based on deep learning have been widely used in computer vision, especially the application of deep learning in depth networks of depth estimation, which will eventually realize real-time pixel-level reconstruction of 3D scenes at different scales.
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基于图像的 3D 重建技术概述
三维(3D)重建技术是利用计算机建立和表达客观世界的关键技术,广泛应用于三维实景、自动驾驶、航空航天、导航和工业机器人等领域。根据原理的不同,主要分为基于传统多视角几何的方法和基于深度学习的方法。本文从三维空间表示的角度介绍上述方法。传统三维重建方法中的特征提取和立体匹配理论是基于深度学习的三维重建方法的理论基础,因此本文将重点介绍。随着传统三维重建方法的发展和深度学习相关理论的发展,逐步形成了以 MVSNet 为代表的显式深度学习三维重建方法和以 NeRF 为代表的隐式三维重建方法。同时,介绍了三维重建的数据集和评价指标。最后,对基于图像的三维重建进行了总结。基于深度学习的深度网络已广泛应用于计算机视觉领域,尤其是深度学习在深度估计网络中的应用,最终将实现不同尺度三维场景的实时像素级重建。
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来源期刊
CiteScore
2.40
自引率
0.00%
发文量
12
审稿时长
5 weeks
期刊介绍: Rapid progress in optics and photonics has broadened its application enormously into many branches, including information and communication technology, security, sensing, bio- and medical sciences, healthcare and chemistry. Recent achievements in other sciences have allowed continual discovery of new natural mysteries and formulation of challenging goals for optics that require further development of modern concepts and running fundamental research. The Journal of the European Optical Society – Rapid Publications (JEOS:RP) aims to tackle all of the aforementioned points in the form of prompt, scientific, high-quality communications that report on the latest findings. It presents emerging technologies and outlining strategic goals in optics and photonics. The journal covers both fundamental and applied topics, including but not limited to: Classical and quantum optics Light/matter interaction Optical communication Micro- and nanooptics Nonlinear optical phenomena Optical materials Optical metrology Optical spectroscopy Colour research Nano and metamaterials Modern photonics technology Optical engineering, design and instrumentation Optical applications in bio-physics and medicine Interdisciplinary fields using photonics, such as in energy, climate change and cultural heritage The journal aims to provide readers with recent and important achievements in optics/photonics and, as its name suggests, it strives for the shortest possible publication time.
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