FlowMap: Path Generation for Automated Vehicles in Open Space Using Traffic Flow

05/02/2023
by   Wenchao Ding, et al.
0

There is extensive literature on perceiving road structures by fusing various sensor inputs such as lidar point clouds and camera images using deep neural nets. Leveraging the latest advance of neural architects (such as transformers) and bird-eye-view (BEV) representation, the road cognition accuracy keeps improving. However, how to cognize the “road” for automated vehicles where there is no well-defined “roads” remains an open problem. For example, how to find paths inside intersections without HD maps is hard since there is neither an explicit definition for “roads” nor explicit features such as lane markings. The idea of this paper comes from a proverb: it becomes a way when people walk on it. Although there are no “roads” from sensor readings, there are “roads” from tracks of other vehicles. In this paper, we propose FlowMap, a path generation framework for automated vehicles based on traffic flows. FlowMap is built by extending our previous work RoadMap, a light-weight semantic map, with an additional traffic flow layer. A path generation algorithm on traffic flow fields (TFFs) is proposed to generate human-like paths. The proposed framework is validated using real-world driving data and is amenable to generating paths for super complicated intersections without using HD maps.

READ FULL TEXT
research
05/26/2019

Deep Representation Learning for Road Detection through Siamese Network

Robust road detection is a key challenge in safe autonomous driving. Rec...
research
12/27/2020

Towards Reducing Energy Waste through Usage of External Communication of Autonomous Vehicles

Automated vehicles can implement strategies to drive with optimized fuel...
research
06/14/2020

RasterNet: Modeling Free-Flow Speed using LiDAR and Overhead Imagery

Roadway free-flow speed captures the typical vehicle speed in low traffi...
research
09/12/2023

Collaborative Dynamic 3D Scene Graphs for Automated Driving

Maps have played an indispensable role in enabling safe and automated dr...
research
03/10/2020

LiDAR Lateral Localisation Despite Challenging Occlusion from Traffic

This paper presents a system for improving the robustness of LiDAR later...
research
03/18/2018

Dynamic Trajectory Model for Analysis of Traffic States using DPMM

Appropriate modeling of a surveillance scene is essential while analyzin...
research
07/18/2022

Layered Cost-Map-Based Traffic Management for Multiple Automated Mobile Robots via a Data Distribution Service

This letter proposes traffic management for multiple automated mobile ro...

Please sign up or login with your details

Forgot password? Click here to reset