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An efficient pose estimation for limited-resourced MAVs using sufficient statistics

机译:使用足够的统计数据,对有限资源的MAV进行有效的姿态估计

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We present a computationally efficient RGB-D based pose estimation solution for less computationally resourced MAVs, which are ideally suited as members in a swarm. Our approach applies the sufficient statistics derived for a least-squares problem to our problem context. RANSAC-based outlier detection in aligning corresponding feature points is a time consuming operation in visual pose estimation. The additive nature of the used sufficient statistics significantly reduces the computation time of the RANSAC procedure since the pose estimation in each test loop can be computed by reusing previously computed sufficient statistics. This eliminates the need for recomputing estimates from scratch each time. A simpler hypotheses testing method gave similar performance in terms of speed but less accurate than our proposed method. We further increase the efficiency by reducing the problem size to four dimensions using attitude data from an Attitude and Heading Reference System (AHRS). Using a real-world dataset, we show that our algorithm saves up to 94% of computation time for the RANSAC-based procedure in pose estimation while improving the accuracy.
机译:我们提出了一种计算效率高的基于RGB-D的姿态估计解决方案,用于计算资源较少的MAV,非常适合作为群体成员。我们的方法将针对最小二乘问题得出的足够统计信息应用于我们的问题上下文。在对准相应特征点时,基于RANSAC的离群值检测是视觉姿势估计中的一项耗时操作。所使用的足够统计量的累加性质显着减少了RANSAC程序的计算时间,因为可以通过重用先前计算的足够统计量来计算每个测试循环中的姿态估计。这样就无需每次都从头开始重新计算估算值。较简单的假设检验方法在速度方面具有相似的性能,但不如我们提出的方法准确。我们使用来自“航向和航向参考系统”(AHRS)的姿态数据将问题的大小减小到四个维度,从而进一步提高了效率。使用现实世界的数据集,我们证明了我们的算法为基于RANSAC的姿态估计过程节省了多达94%的计算时间,同时提高了准确性。

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