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An iterative pose estimation algorithm based on epipolar geometry with application to multi-target tracking

机译:一种基于eMipolore的迭代姿势估计算法应用于多目标跟踪的应用

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This paper introduces a new algorithm for estimating the relative pose of a moving camera using consecutive frames of a video sequence. State-of-the-art algorithms for calculating the relative pose between two images use matching features to estimate the essential matrix. The essential matrix is then decomposed into the relative rotation and normalized translation between frames. To be robust to noise and feature match outliers, these methods generate a large number of essential matrix hypotheses from randomly selected minimal subsets of feature pairs, and then score these hypotheses on all feature pairs. Alternatively, the algorithm introduced in this paper calculates relative pose hypotheses by directly optimizing the rotation and normalized translation between frames, rather than calculating the essential matrix and then performing the decomposition. The resulting algorithm improves computation time by an order of magnitude. If an inertial measurement unit (IMU) is available, it is used to seed the optimizer, and in addition, we reuse the best hypothesis at each iteration to seed the optimizer thereby reducing the number of relative pose hypotheses that must be generated and scored. These advantages greatly speed up performance and enable the algorithm to run in real-time on low cost embedded hardware. We show application of our algorithm to visual multi-target tracking (MTT) in the presence of parallax and demonstrate its real-time performance on a 640 x 480 video sequence captured on a UAV. Video results are available at https://youtu.be/HhK-p2hXNnU.
机译:本文介绍了一种新的算法,用于使用视频序列的连续帧估计运动相机的相对姿势。用于计算两个图像之间的相对姿势的最先进的算法使用匹配特征来估计基本矩阵。然后将基本矩阵分解为帧之间的相对旋转和标准化转换。为了对噪声和特征匹配异常值稳健,这些方法从随机选择的特征对的最小子集生成大量基本矩阵假设,然后在所有特征对上进行评分这些假设。或者,本文中引入的算法通过直接优化帧之间的旋转和归一化转换来计算相对姿势假设,而不是计算基本矩阵,然后执行分解。得到的算法通过幅度提高计算时间。如果有惯性测量单元(IMU)可用,则用于播种优化器,此外,我们在每次迭代中重复使用最佳假设,以使优化器进行种子,从而减少必须生成和得分的相对姿势假设的数量。这些优点大大加快了性能,使算法能够在低成本嵌入式硬件上实时运行。我们在存在视差存在下显示我们的算法在视觉多目标跟踪(MTT)中的应用,并在UAV上捕获的640 x 480视频序列上展示其实时性能。视频结果在https://youtu.be/hhk-p2hxnnu获得。

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