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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Exhaustive Linearization for Robust Camera Pose and Focal Length Estimation
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Exhaustive Linearization for Robust Camera Pose and Focal Length Estimation

机译:详尽的线性化以实现稳健的相机姿势和焦距估计

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We propose a novel approach for the estimation of the pose and focal length of a camera from a set of 3D-to-2D point correspondences. Our method compares favorably to competing approaches in that it is both more accurate than existing closed form solutions, as well as faster and also more accurate than iterative ones. Our approach is inspired on the EPnP algorithm, a recent O(n) solution for the calibrated case. Yet we show that considering the focal length as an additional unknown renders the linearization and relinearization techniques of the original approach no longer valid, especially with large amounts of noise. We present new methodologies to circumvent this limitation termed exhaustive linearization and exhaustive relinearization which perform a systematic exploration of the solution space in closed form. The method is evaluated on both real and synthetic data, and our results show that besides producing precise focal length estimation, the retrieved camera pose is almost as accurate as the one computed using the EPnP, which assumes a calibrated camera.
机译:我们提出了一种从一组3D到2D点对应关系估算照相机的姿势和焦距的新颖方法。我们的方法与竞争方法相比具有优势,因为它既比现有的封闭式解决方案更准确,又比迭代的解决方案更快且更准确。我们的方法受到EPnP算法的启发,EPnP算法是针对已校准情况的最新O(n)解决方案。然而,我们表明,将焦距视为额外的未知数会使原始方法的线性化和重新线性化技术不再有效,尤其是在存在大量噪声的情况下。我们提出了新的方法来规避称为穷举线性化和穷举重新线性化的这种限制,它们以封闭形式对系统解空间进行了系统的探索。该方法在真实数据和合成数据上都进行了评估,我们的结果表明,除了产生精确的焦距估计值外,检索到的相机姿态几乎与使用EPnP(假设已校准相机)计算出的姿态准确度相同。

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