使用环绕视图映射和定位

Marc Sons, M. Lauer, C. G. Keller, C. Stiller
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引用次数: 22

摘要

智能汽车在很大程度上依赖于鲁棒和精确的自我定位。全球卫星导航系统(GNSS)在城市环境中由于多径和阴影效应而不可靠。基于视觉的定位提供了一个很有前途的选择。提出了一种利用多台摄像机覆盖周围环境的高精度六自由度自定位方法。首先,利用该区域前一次经过的图像创建点特征图。然后利用该地图实时进行高精度定位。在定位时,通过将映射的地标投影到当前图像中,使用当前姿态的粗略先验估计来缩小特征匹配的搜索空间。然后,将存储的投影地标观测值与实际观测值进行匹配,并通过反投影误差最小化来估计自拟值。因此,我们的地图结构有效地为多摄像机的定位提供了地图地标。在现实世界的实验中,我们证明了我们的方法在以任意方向传递映射区域时提供了可靠的定位结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping and localization using surround view
Intelligent vehicles heavily rely on robust and accurate self-localization. Global navigation satellite systems (GNSS) are not reliable in urban environments due to multipath and shadowing effects. Vision-based localization offers a promising alternative. We present a high-precision six degrees of freedom self-localization method using multiple cameras covering the surrounding environment. First, a point feature map is created using images from a previous pass of the area to map. Thereafter, the map is used for high-precision localization in real-time. While localization, a rough prior estimate of the current pose is used to shrink the search space for feature matching by projecting mapped landmarks into current images. Then, stored observations of the projected landmarks are matched to actual observations and the egopose is estimated by back-projection error minimization. Thereby, our map structure provides mapped landmarks efficiently towards localization with multiple cameras. In real-world experiments we show that our approach provides reliable localization results while passing the mapped area in arbitrary orientation.
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