Computing MAP trajectories by representing, propagating and combining PDFs over groups

Paul Smith, T. Drummond, K. Roussopoulos
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引用次数: 32

Abstract

This paper addresses the problem of computing the trajectory of a camera from sparse positional measurements that have been obtained from visual localisation, and dense differential measurements from odometry or inertial sensors. A fast method is presented for fusing these two sources of information to obtain the maximum a posteriori estimate of the trajectory. A formalism is introduced for representing probability density functions over Euclidean transformations, and it is shown how these density functions can be propagated along the data sequence and how multiple estimates of a transformation can be combined. A three-pass algorithm is described which makes use of these results to yield the trajectory of the camera. Simulation results are presented which are validated against a physical analogue of the vision problem, and results are then shown from sequences of approximately 1,800 frames captured from a video camera mounted on a go-kart. Several of these frames are processed using computer vision to obtain estimates of the position of the go-kart. The algorithm fuses these estimates with odometry from the entire sequence in 150 ms to obtain the trajectory of the kart.
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通过在组上表示、传播和组合pdf来计算MAP轨迹
本文解决了从视觉定位获得的稀疏位置测量和从里程计或惯性传感器获得的密集差分测量中计算相机轨迹的问题。提出了一种快速融合两种信息源的方法,以获得弹道的最大后验估计。介绍了在欧几里得变换上表示概率密度函数的一种形式,并展示了这些密度函数如何沿着数据序列传播,以及如何组合变换的多个估计。描述了一种利用这些结果产生相机轨迹的三步算法。通过视觉问题的物理模拟验证了仿真结果,然后显示了从安装在卡丁车上的摄像机捕获的大约1800帧序列的结果。其中一些帧使用计算机视觉处理,以获得卡丁车位置的估计。该算法在150毫秒内将这些估计与整个序列的里程计融合,以获得卡丁车的轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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