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Good Edgels to Track: Beating the Aperture Problem with Epipolar Geometry

机译:要跟踪的好Edgels:用对极几何克服孔径问题

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An open issue in multiple view geometry and structure from motion, applied to real life scenarios, is the sparsity of the matched key-points and of the reconstructed point cloud. We present an approach that can significantly improve the density of measured displacement vectors in a sparse matching or tracking setting, exploiting the partial information of the motion field provided by linear oriented image patches (edgels). Our approach assumes that the epipolar geometry of an image pair already has been computed, either in an earlier feature-based matching step, or by a robustified differential tracker. We exploit key-points of a lower order, edgels, which cannot provide a unique 2D matching, but can be employed if a constraint on the motion is already given. We present a method to extract edgels, which can be effectively tracked given a known camera motion scenario, and show how a constrained version of the Lucas-Kanade tracking procedure can efficiently exploit epipolar geometry to reduce the classical KLT optimization to a 1D search problem. The potential of the proposed methods is shown by experiments performed on real driving sequences.
机译:从运动应用于多场景几何和结构的一个开放性问题(应用于现实生活场景)是匹配的关键点和重构的点云的稀疏性。我们提出一种方法,可以利用稀疏匹配或跟踪设置中的线性定向图像斑块(edgels)提供的运动场的部分信息来显着提高所测量的位移矢量的密度。我们的方法假设已经在较早的基于特征的匹配步骤中或通过鲁棒的差分跟踪器计算出了图像对的对极几何形状。我们利用较低阶的关键点edgels,它不能提供唯一的2D匹配,但是如果已经给出了运动约束,则可以使用该关键点。我们提出了一种提取edgels的方法,该方法可以在已知的摄像机运动场景下有效地进行跟踪,并显示Lucas-Kanade跟踪程序的受约束版本如何可以有效利用对极几何将经典KLT优化减少到一维搜索问题。通过在真实驾驶序列上进行的实验表明了所提出方法的潜力。

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