We describe a light-weight, weather and lighting invariant, Semantic Bird's Eye View (S-BEV) signature for vision-based vehicle re-localization. A topological map of S-BEV signatures is created during the first traversal of the route, which are used for coarse localization in subsequent route traversal. A fine-grained localizer is then trained to output the global 3-DoF pose of the vehicle using its S-BEV and its coarse localization. We conduct experiments on vKITTI2 virtual dataset and show the potential of the S-BEV to be robust to weather and lighting. We also demonstrate results with 2 vehicles on a 22 km long highway route in the Ford AV dataset.
翻译:我们描述一个轻量、天气和照明的变异性、语义鸟眼视(S-BEV)标志,用于基于视觉的车辆重新定位。在路线的第一次穿行期间绘制了S-BEV标志的地形图,用于随后的路线穿行过程中粗糙的本地化。然后对精细的本地化器进行了培训,以利用S-BEV及其粗糙的本地化输出该车辆的全球3-DoF构成。我们进行了VKITTI2虚拟数据集实验,并展示了S-BEV对天气和照明的强大潜力。我们还在Ford AV数据集的22公里长的高速公路上用两辆汽车展示了结果。