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Monocular Localization in HD Maps by Combining Semantic Segmentation and Distance Transform

机译:通过组合语义分割和距离变换,通过组合HD映射单眼定位

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Easy, yet robust long-term localization is still an open topic in research. Existing approaches require either dense maps, expensive sensors, specialized map features or proprietary detectors.We propose using semantic segmentation on a monocular camera to localize directly in a HD map as used for automated driving. This combines lightweight, yet powerful HD maps with the simplicity of monocular vision and the flexibility of neural networks.The major challenges arising from this combination are data association and robustness against misdetections. Association is solved efficiently by applying distance transform on binary per-class images. This provides not only a fast lookup table for a smooth gradient as needed for pose-graph optimization, but also dynamic association by default.A sliding-window pose graph optimization combines single image detections with vehicle odometry, smoothing results and helping overcome even misclassifications in consecutive frames.Evaluation against a highly accurate 6D visual localization shows that our approach can achieve accuracy levels as required for automated driving, being one of the most lightweight and flexible methods to do so.
机译:简单,但坚固的长期本地化仍然是研究中的开放课题。现有方法需要密集的地图,昂贵的传感器,专业地图特征或专有探测器。我们建议在单眼相机上使用语义分割,直接在用于自动驾驶的高清地图中本地化。这与单眼视觉的简单性和神经网络的灵活性结合了轻量级,但强大的高清地图。这种组合产生的主要挑战是数据关联和针对误解的鲁棒性。通过在二元图像上应用距离变换来有效地解决了关联。这不仅根据需要为姿态-图形优化提供了一种平滑的梯度的快速查找表,但与车辆的里程计由default.A也动态关联滑动窗口姿态图形优化联合单图像检测,平滑结果并帮助克服即使在错误分类连续帧。评估高度准确的6D视觉本地化表明,我们的方法可以根据自动化驾驶所需的方法实现准确度,是最轻便和灵活的方法之一。

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