Robust visual localization for urban vehicles remains challenging and unsolved. The limitation of computation efficiency and memory size has made it harder for large-scale applications. Since semantic information serves as a stable and compact representation of the environment, we propose a coarse-to-fine localization system based on a semantic compact map. Pole-like objects are stored in the compact map, then are extracted from semantically segmented images as observations. Localization is performed by a particle filter, followed by a pose alignment module decoupling translation and rotation to achieve better accuracy. We evaluate our system both on synthetic and realistic datasets and compare it with two baselines, a state-of-art semantic feature-based system, and a traditional SIFT feature-based system. Experiments demonstrate that even with a significantly small map, such as a 10 KB map for a 3.7 km long trajectory, our system provides a comparable accuracy with the baselines.
翻译:由于计算效率和内存大小的限制使得大规模应用更加困难。由于语义信息是环境的一个稳定和紧凑的表示,我们提议以语义紧凑的地图为基础建立一个粗到软的本地化系统。像波兰一样的物体储存在紧凑的地图上,然后从断层图像中提取作为观测结果。本地化由一个粒子过滤器进行,随后是组合对齐模块分离翻译和旋转,以达到更好的准确性。我们从合成和现实的数据集的角度对我们的系统进行评估,并将其与两个基线进行比较,一个基于语义特征的系统,一个基于传统的SIFT特征的系统。实验表明,即使使用非常小的地图,例如用于3.7公里长的轨道的10KB地图,我们的系统也提供了与基线的类似准确性。