generalchan825 / AVData

Autonomous Vehicle Seasonal Dataset

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Ford AV Dataset Tutorial

This Tutorial contains installation instructions for the packages released along with Ford Multi AV Dataset. For more details please visit the website.

Website

To get more details about the Ford AV Dataset, please visit avdata.ford.com

System Requirements

This code repository has been tested on a Laptop containing 32 gb RAM, Ubuntu 16.04 and ROS Kinetic.

Installation

Dependencies

These packages depend on

  • python 2.x
  • Standard ROS packages (roscpp, rospy, sensor_msgs, std_msgs, tf2_ros)
  • rviz
  • pcl_conversions
  • velodyne

Clone the latest version from this repository into your catkin workspace and compile the packages using the following snippet. If you do not have a catkin workspace, please read this tutorial to create one.

cd catkin_ws/src
git clone https://github.com/Ford/AVData.git
cd ../
catkin_make
source devel/setup.bash

Package Description

  • ford_demo - This package contains the launch files, rviz plugins and helper scripts. The multi_lidar_convert launch file uses the velodyne package.

  • fusion_description - This package contains the Ford fusion URDF for visualization in Rviz. The physical parameters mentioned in the URDF are just for representation and visualization and do not represent the actual properties of a Ford Fusion vehicle.

  • map_loader - Map loader package loads the ground plane reflectivity and 3D pointcloud maps as ROS PointCloud2 messages. The package subscribes to vehicle pose to decide what section of the map to display. Various dynamic parameters include:

    • publish_rate - Rate at which the each PointCloud2 map is published (hz)
    • pcd_topic - Name of the 3d pointcloud map or ground plane reflectivity map topic
    • pose_topic - Name of the pose topic to determine vehicle location (default: /pose_ground_truth)
    • neighbor_dist - The radius lookup to publish map tiles (m). A value of 128 means the publisher will publish map tiles whose origin lies within 128m (euclidean distance) of the origin of the tile the vehicle is in.

    Please note that the poinclouds are computation intensive in general. If you're running a 16gb system, the visualization could lag due to large pointclouds. Tune the publish_rate, neighbor_dist parameters to optimize based on your application.

Dataset Download

To get with quickly started, download the sample data. In order to download more data, visit the download page of the website

Usage

In order to run the demo, you will need the rosbag, maps and the calibration files. These can be downloaded here. Once you have these files, run the demo launch file using

roslaunch ford_demo demo.launch map_dir:=/path/to/map/folder/ calibration_dir:=/path/to/calibration/folder/

In a new terminal, run the rosbag file

rosbag play /path/to/your/bag/file/name.bag

To view the live lidar pointcloud, in a new terminal, run the launch file

roslaunch ford_demo multi_lidar_convert.launch

picture

In order to convert bag files to human readable csv files, we provide a python script bag_to_csv.py. This python script uses a yaml config file to determine which topics need to be converted to csv files. A sample config.yaml file is provided in the ford_demo/scripts folder. In order to convert a bag file, run the the following command

python bag_to_csv /path/to/your/bag/file/name.bag /path/to/the/config/file/name.yaml

Publication

For further details, please refer to the following paper:

Siddharth Agarwal, Ankit Vora, Gaurav Pandey, Wayne Williams, Helen Kourous and James McBride, "Ford Multi-AV Seasonal Dataset", in arXiv preprint arXiv:2003.07969,2020.[arxiv][pdf]

If you use this dataset, please cite our paper or use the following Bibtex.

@misc{agarwal2020ford,
    title={Ford Multi-AV Seasonal Dataset},
    author={Siddharth Agarwal and Ankit Vora and Gaurav Pandey and Wayne Williams and Helen Kourous and James McBride},
    year={2020},
    eprint={2003.07969},
    archivePrefix={arXiv},
    primaryClass={cs.RO}
}

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Autonomous Vehicle Seasonal Dataset

License:MIT License


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