论文标题

自动驾驶汽车本地化的最佳网格图是什么?在不同类型的照明,流量和环境下进行评估

What is the Best Grid-Map for Self-Driving Cars Localization? An Evaluation under Diverse Types of Illumination, Traffic, and Environment

论文作者

Mutz, Filipe, Oliveira-Santos, Thiago, Forechi, Avelino, Komati, Karin S., Badue, Claudine, França, Felipe M. G., De Souza, Alberto F.

论文摘要

对于多个任务,例如保持地图的更新,跟踪对象和计划需要进行自动驾驶汽车的本地化。定位算法通常利用地图来估计汽车姿势。由于维护和使用多个地图在计算上是昂贵的,因此分析哪种映射类型对每个应用程序都更加足够,这一点很重要。在这项工作中,我们通过比较使用占用率,反射率,颜色或语义网格映射时比较粒子过滤器定位的准确性来提供此类分析的数据。据我们所知,文献中缺少这种评估。为了构建语义和颜色网格图,从光检测和范围(LIDAR)传感器中的点云与前置摄像头捕获的图像融合在一起。语义信息是从具有深神网络的图像中提取的。在各种照明和流量条件下,在各种环境中进行实验。结果表明,占用网格图导致更准确的定位,然后是反射率网格图。在大多数情况下,具有语义网格地图的本地化使位置跟踪没有灾难性的损失,但错误的误差比以前大2到3倍。颜色网格图也导致不准确和不稳定的本地化,即使使用稳健的度量标准,熵相关系数,用于比较在线数据和地图。

The localization of self-driving cars is needed for several tasks such as keeping maps updated, tracking objects, and planning. Localization algorithms often take advantage of maps for estimating the car pose. Since maintaining and using several maps is computationally expensive, it is important to analyze which type of map is more adequate for each application. In this work, we provide data for such analysis by comparing the accuracy of a particle filter localization when using occupancy, reflectivity, color, or semantic grid maps. To the best of our knowledge, such evaluation is missing in the literature. For building semantic and colour grid maps, point clouds from a Light Detection and Ranging (LiDAR) sensor are fused with images captured by a front-facing camera. Semantic information is extracted from images with a deep neural network. Experiments are performed in varied environments, under diverse conditions of illumination and traffic. Results show that occupancy grid maps lead to more accurate localization, followed by reflectivity grid maps. In most scenarios, the localization with semantic grid maps kept the position tracking without catastrophic losses, but with errors from 2 to 3 times bigger than the previous. Colour grid maps led to inaccurate and unstable localization even using a robust metric, the entropy correlation coefficient, for comparing online data and the map.

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