基于伪线性化和误差变量模型的三维重建

Tingbo Hou, Junwen Wang, Feng Zhu, Zelin Shi
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引用次数: 0

摘要

本文提出了一种基于伪线性化和变量误差模型相结合的三维重建方法,这是计算机视觉和虚拟现实中的一个主要问题。该方法考虑了非线性约束下的大量损坏测量,并通过考虑误差来优化估计。此外,我们建立了一个综合投影模型,并采用标准差-期望准则来评估我们的方法在三维重建中的性能。此外,从图像数据库中选取了一些测试图像,以使该方法有机会在我们的实验中展示其性能。最后,将该方法成功应用于无标定增强现实系统中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D Reconstruction Based on Pseudo-Linearization and Errors-in-Variables Model
This paper proposes a general approach of 3D reconstruction, a major problem arising in computer vision and virtual reality, based on a combination of Pseudo-Linearization and Errors-in-Variables model. The proposed approach concerns a bunch of corrupted measurements under nonlinear constraints, and optimizes the estimation by taking errors into account. Furthermore, we set a synthetic projective model and adopt a standard deviation-expectation criterion to evaluate the performance or our method applied in 3D reconstruction. Also, some test images are picked from an image database to give this method a chance to demonstrate its performance in our experiments. Finally, as a successful application, this method is used in a calibration-free augmented reality system.
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