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Optimal estimation of vanishing points in a Manhattan world

机译:曼哈顿世界中消失点的最佳估计

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In this paper, we present an analytical method for computing the globally optimal estimates of orthogonal vanishing points in a “Manhattan world” with a calibrated camera. We formulate this as constrained least-squares problem whose optimality conditions form a multivariate polynomial system. We solve this system analytically to compute all the critical points of the least-squares cost function, and hence the global minimum, i.e., the globally optimal estimate for the orthogonal vanishing points. The same optimal estimator is used in conjunction with RANSAC to generate orthogonal-vanishing-point hypotheses (from triplets of lines) and thus classify lines into parallel and mutually orthogonal groups. The proposed method is validated experimentally on the York Urban Database.
机译:在本文中,我们提出了一种使用校准相机计算“曼哈顿世界”中正交消失点的全局最优估计的分析方法。我们将此公式化为约束最小二乘问题,其最优性条件形成了多元多项式系统。我们以解析方式求解该系统,以计算最小二乘成本函数的所有关键点,从而计算出全局最小值,即正交消失点的全局最优估计值。将相同的最佳估计量与RANSAC结合使用,以生成正交消失点假设(根据线的三元组),从而将线分为平行和相互正交的组。该方法在York Urban Database上进行了实验验证。

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