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Balanced Recovery of 3D Structure and Camera Motion from Uncalibrated Image Sequences

机译:来自Uncalbriated图像序列的3D结构和相机运动的平衡恢复

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Metric reconstruction of a scene viewed by an uncalibrated camera undergoing an unknown motion is a fundamental task in computer vision. To obtain accurate results all the methods rely on bundle adjustment, a nonlinear optimization technique which minimizes the reprojection error over the structural and camera parameters. Bundle adjustment is optimal for normally distributed measurement noise, however, its performance depends on the starting point. The initial solution is usually obtained by solving a linearized constraint through a total least squares procedure, which yields a biased estimated. We present a more balanced approach where in main computational modules of an uncalibrated reconstruction system, the initial solution is obtained from a statistically justified estimator which assures its unbiasedness. Since the quality of the new initial solution is already comparable with that of the result of bundle adjustment, the burden on the latter is drastically reduced while its reliability is significantly increased. The performance of our system was assessed for both synthetic data and standard image sequences.
机译:经过未知运动的未校准相机观看的场景的度量重建是计算机视觉中的基本任务。为了获得准确的结果,所有方法都依赖于捆绑调整,这是一种非线性优化技术,可最大限度地减少结构和相机参数的刻录误差。捆绑调整对于通常分布式测量噪声最佳,但其性能取决于起点。通常通过通过总量的至少方块程序求解线性化约束来获得初始解决方案,其产生偏置估计。我们介绍了一种更平衡的方法,其中在未校准的重建系统的主要计算模块中,初始解决方案是从统计学上合理的估计器获得的,该估计值确保其无偏见。由于新初始解决方案的质量与捆绑调整结果的质量相当,因此后者的负担急剧减少,而其可靠性显着增加。对合成数据和标准图像序列评估我们系统的性能。

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