Feature matching for 3D AR: Review from handcrafted methods to deep learning

Houssam Halmaoui, A. Haqiq
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引用次数: 0

Abstract

3D augmented reality (AR) has a photometric aspect of 3D rendering and a geometric aspect of camera tracking. In this paper, we will discuss the second aspect, which involves feature matching for stable 3D object insertion. We present the different types of image matching approaches, starting from handcrafted feature algorithms and machine learning methods, to recent deep learning approaches using various types of CNN architectures, and more modern end-to-end models. A comparison of these methods is performed according to criteria of real time and accuracy, to allow the choice of the most relevant methods for a 3D AR system.
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3D AR的特征匹配:从手工方法到深度学习的回顾
三维增强现实(AR)具有三维渲染的光度方面和相机跟踪的几何方面。在本文中,我们将讨论第二个方面,即稳定的三维物体插入的特征匹配。我们提出了不同类型的图像匹配方法,从手工制作的特征算法和机器学习方法,到使用各种类型CNN架构的最新深度学习方法,以及更现代的端到端模型。根据实时性和准确性的标准对这些方法进行比较,以便为3D AR系统选择最相关的方法。
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