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Factorization of canonic homographies for camera calibration and scene modeling

机译:相机校准和场景建模的经典单应性的因式分解

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This paper proposes a novel framework to calibrate cameras and model a scene simultaneously using both self-calibration constraints and geometric information on parallelograms. The proposed method is a factorization-based approach solving the problem by decomposing a measurement matrix into camera and parallelogram parameters. Since the factorizationbased approach recovers all camera poses simultaneously, the consistency of rigid transformations among cameras can be ensured. This paper also suggests the strategy dealing with the missing data, which is usually an obstacle to factorizationbased approaches. The proposed method is more useful than the previous factorization-based approach using parallelepipeds because parallelograms are more basic scene elements. Moreover, this paper describes the unifying method using the constraints from parallelograms and parallelepipeds simultaneously in the proposed framework. The results of the experiments with synthetic data and real outdoor images are presented to demonstrate the feasibility of the proposed method.
机译:本文提出了一种新颖的框架,可以使用自校准约束和平行四边形上的几何信息同时校准相机并同时对场景建模。所提出的方法是基于分解的方法,通过将测量矩阵分解为相机和平行四边形参数来解决该问题。由于基于分解的方法可同时恢复所有摄像机姿态,因此可以确保摄像机之间进行刚性变换的一致性。本文还提出了处理丢失数据的策略,这通常是基于分解的方法的障碍。所提出的方法比以前使用平行六面体的基于因式分解的方法更有用,因为平行四边形是更基本的场景元素。此外,本文描述了在提出的框架中同时使用平行四边形和平行六面体的约束的统一方法。提出了利用合成数据和真实室外图像进行实验的结果,以证明该方法的可行性。

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