基于多全局假设的增强现实跟踪新框架

K. Hayashi, H. Kato, S. Nishida
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引用次数: 1

摘要

已经提出了几种用于增强现实的跟踪技术。在特征点跟踪中,通过最小化观察到的2D特征点与从3D场景模型中反向投影的特征点之间的误差来计算姿态。这种最小化问题通常通过非线性优化来解决。这种方法的主要优点是它的准确性。然而,除非使用适当的初始值,否则很难计算出正确的姿态。此外,当观测值存在误差时,该方法即使收敛到全局最小值,也不能保证得到正确的姿态。因此,一旦在一帧中计算出不正确的姿态,下一帧的跟踪可能会失败,或者结果会偏离正确的姿态。本文提出了一种新的增强现实跟踪框架。该方法不仅基于一个姿态,而且基于前一帧的姿态估计计算出的多个姿态,作为多个局部假设来跟踪特征。由于多个姿态被维持为全局假设,只要假设中包含正确的姿态,即使在高速运动的简单迭代场景等困难情况下也可以继续跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Framework for Tracking by Maintaining Multiple Global Hypotheses for Augmented Reality
Several tracking techniques for augmented reality have been proposed. In feature point tracking, a pose is computed by minimizing the error between the observed 2D feature points and the back-projected feature points from the 3D scene model. This minimization problem is usually solved by nonlinear optimization. The main advantage of this approach is its accuracy. However, it is difficult to compute the correct pose unless an appropriate initial value is used. In addition, when an observation contains some errors, this approach does not guarantee a correct pose even if it converges to the global minimum. Therefore, once an incorrect pose is computed in a frame, either the tracking in the next frame may fail or the result will deviate from the correct pose. In this paper, we propose a new tracking framework for augmented reality. The proposed method tracks features as multiple local hypotheses based on not just one pose but multiple poses that are computed from pose estimation in the previous frame. Since multiple poses are maintained as global hypotheses, as long as the correct pose is contained in the hypotheses, tracking can be continued even in difficult situations such as a simple iterative scene with high-speed movements.
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