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Pose fusion with chain pose graphs for automated driving

机译:姿势融合与链状姿势图自动驾驶

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Automated driving relies on fast, recent, accurate, and highly available pose estimates. A single localization system, however, can commonly ensure this only to some extent. In this paper, we propose a multi-sensor fusion approach that resolves this by combining multiple localization systems in a plug and play manner. We formulate our approach as a sliding window pose graph and enforce a particular graph structure which enables efficient optimization and a novel form of marginalization. Our pose fusion approach scales from a filtering-based to a batch solution by increasing the size of the sliding window. We evaluate our approach on simulated data as well as on real data gathered with a prototype vehicle and demonstrate that our solution runs comfortably at 20 Hz, provides timely estimates, is accurate, and yields a high availability.
机译:自动驾驶依赖于快速,最新,准确和高度可用的姿势估计。但是,单个本地化系统通常只能在一定程度上确保这一点。在本文中,我们提出了一种多传感器融合方法,该方法通过即插即用的方式组合多个定位系统来解决此问题。我们将我们的方法表述为滑动窗口姿势图,并强制执行一种特定的图结构,以实现有效的优化和新颖的边缘化形式。通过增加滑动窗口的大小,我们的姿势融合方法从基于过滤的解决方案扩展到批处理解决方案。我们评估了我们在模拟数据以及使用原型车收集的真实数据上的方法,并证明了我们的解决方案能够以20 Hz的频率舒适运行,提供及时的估算,准确且具有很高的可用性。

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