论文标题

福特多AV季节性数据集

Ford Multi-AV Seasonal Dataset

论文作者

Agarwal, Siddharth, Vora, Ankit, Pandey, Gaurav, Williams, Wayne, Kourous, Helen, McBride, James

论文摘要

本文提出了一个具有挑战性的多代理季节性数据集,该数据集在2017 - 18年期间的不同日期和时间内由福特自动驾驶汽车舰队收集。 The vehicles traversed an average route of 66 km in Michigan that included a mix of driving scenarios such as the Detroit Airport, freeways, city-centers, university campus and suburban neighbourhoods, etc. Each vehicle used in this data collection is a Ford Fusion outfitted with an Applanix POS-LV GNSS system, four HDL-32E Velodyne 3D-lidar scanners, 6 Point Grey 1.3 MP Cameras arranged on 360度覆盖的屋顶和1个点格里5 MP相机安装在挡风玻璃后面,以进行前视场。我们介绍了在动态城市环境中经历的天气,照明,建筑和交通状况的季节变化。该数据集可以帮助设计用于自动驾驶汽车和多代理系统的强大算法。数据集中的每个登录都是时间戳记,并包含来自所有传感器,校准值,姿势轨迹,地面真相姿势和3D地图的原始数据。所有数据均以ROSBAG格式获得,可以使用开源机器人操作系统(ROS)可视化,修改和应用。我们还为基于基准的本地化提供了基于最新反射率的本地化的输出。数据集可以在我们的网站上自由下载。

This paper presents a challenging multi-agent seasonal dataset collected by a fleet of Ford autonomous vehicles at different days and times during 2017-18. The vehicles traversed an average route of 66 km in Michigan that included a mix of driving scenarios such as the Detroit Airport, freeways, city-centers, university campus and suburban neighbourhoods, etc. Each vehicle used in this data collection is a Ford Fusion outfitted with an Applanix POS-LV GNSS system, four HDL-32E Velodyne 3D-lidar scanners, 6 Point Grey 1.3 MP Cameras arranged on the rooftop for 360-degree coverage and 1 Pointgrey 5 MP camera mounted behind the windshield for the forward field of view. We present the seasonal variation in weather, lighting, construction and traffic conditions experienced in dynamic urban environments. This dataset can help design robust algorithms for autonomous vehicles and multi-agent systems. Each log in the dataset is time-stamped and contains raw data from all the sensors, calibration values, pose trajectory, ground truth pose, and 3D maps. All data is available in Rosbag format that can be visualized, modified and applied using the open-source Robot Operating System (ROS). We also provide the output of state-of-the-art reflectivity-based localization for bench-marking purposes. The dataset can be freely downloaded at our website.

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