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2D-3D feature association via projective transform invariants for model- based 3D pose estimation

机译:通过投影变换不变量进行2D-3D特征关联,用于基于模型的3D姿态估计

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The three dimensional (3D) tracking of rigid objects is required in many applications, such as 3D television (3DTV) and augmented reality. Accurate and robust pose estimates enable improved structure reconstructions for 3DTV and reduce jitter in augmented reality scenarios. On the other hand, reliable 2D-3D feature association is one of the most crucial requirements for obtaining high quality 3D pose estimates. In this paper, a 2D-3D registration method, which is based on projective transform invariants, is proposed. Due to the fact that projective transform invariants are highly dependent on 2D and 3D coordinates, the proposed method relies on pose consistencies in order to increase robustness of 2D-3D association. The reliability of the approach is shown by comparisons with RANSAC, perspective factorization and SoftPOSIT based methods on real and artificial data.
机译:在许多应用中,例如3D电视(3DTV)和增强现实,需要对刚性对象进行三维(3D)跟踪。准确而稳健的姿势估计可以改善3DTV的结构重建,并减少增强现实场景中的抖动。另一方面,可靠的2D-3D特征关联是获取高质量3D姿态估计的最关键要求之一。本文提出了一种基于投影变换不变量的二维3D配准方法。由于投影变换不变量高度依赖于2D和3D坐标的事实,所提出的方法依赖于姿势一致性,以提高2D-3D关联的鲁棒性。通过与RANSAC,透视图分解和基于SoftPOSIT的真实和人工数据方法进行比较,表明了该方法的可靠性。

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