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Extracting structure from optical flow using the fast error search technique

机译:使用快速误差搜索技术从光流中提取结构

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In this paper, we present a globally optimal and computationally efficient technique for estimating the focus of expansion (FOE) of an optical flow field, using fast partial search. For each candidate location on a discrete sampling of the image area, we generate a linear system of equations for determining the remaining unknowns, viz. rotation and inverse depth. We compute the least squares error of the system without actually solving the equations, to generate an error surface that describes the goodness of fit across the hypotheses. Using Fourier techniques, we prove that given an N x N flow field, the FOE, and subsequently rotation and structure, can be estimated in O(N-2 log N) operations. Since the resulting system is linear, bounded perturbations in the data lead to bounded errors. We support the theoretical development and proof of our technique with experiments on synthetic and real data. Through a series of experiments on synthetic data, we prove the correctness, robustness and operating envelope of our algorithm. We demonstrate the utility of our technique by applying it for detecting obstacles from a monocular sequence of images. [References: 35]
机译:在本文中,我们提出了一种全局最优且计算效率高的技术,用于使用快速局部搜索来估计光流场的扩展焦点(FOE)。对于图像区域离散采样上的每个候选位置,我们生成方程式的线性系统以确定剩余的未知数,即。旋转和反深度。我们在不实际求解方程的情况下计算系统的最小二乘误差,以生成一个描述所有假设拟合优度的误差面。使用傅立叶技术,我们证明给定N x N流场,可以在O(N-2 log N)操作中估计FOE以及随后的旋转和结构。由于生成的系统是线性的,因此数据中的有限扰动会导致有限误差。我们通过合成和真实数据的实验来支持我们技术的理论发展和证明。通过对合成数据进行的一系列实验,我们证明了算法的正确性,鲁棒性和运算包络。我们通过将其应用于从单眼图像序列中检测障碍物来证明我们技术的实用性。 [参考:35]

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