Hierarchical Recurrent Attention Networks for Structured Online Maps

Type: Article

Publication Date: 2018-06-01

Citations: 75

DOI: https://doi.org/10.1109/cvpr.2018.00360

Download PDF

Abstract

In this paper, we tackle the problem of online road network extraction from sparse 3D point clouds. Our method is inspired by how an annotator builds a lane graph, by first identifying how many lanes there are and then drawing each one in turn. We develop a hierarchical recurrent network that attends to initial regions of a lane boundary and traces them out completely by outputting a structured poly-line. We also propose a novel differentiable loss function that measures the deviation of the edges of the ground truth polylines and their predictions. This is more suitable than distances on vertices, as there exists many ways to draw equivalent polylines. We demonstrate the effectiveness of our method on a 90 km stretch of highway, and show that we can recover the right topology 92% of the time.

Locations

  • arXiv (Cornell University) - View - PDF

Works That Cite This (45)

Action Title Year Authors
+ PDF Chat RNGDet: Road Network Graph Detection by Transformer in Aerial Images 2022 Zhenhua Xu
Yuxuan Liu
Lu Gan
Yuxiang Sun
Xinyu Wu
Ming Liu
Lujia Wang
+ PDF Chat Learning Lane Graph Representations for Motion Forecasting 2020 Ming Liang
Bin Yang
Rui Hu
Yun Chen
Renjie Liao
Song Feng
Raquel Urtasun
+ PolyTransform: Deep Polygon Transformer for Instance Segmentation 2019 Justin Liang
Namdar Homayounfar
Wei-Chiu Ma
Yuwen Xiong
Rui Hu
Raquel Urtasun
+ Neural Turtle Graphics for Modeling City Road Layouts 2019 Hang Chu
Daiqing Li
David Acuna
Amlan Kar
Maria Shugrina
Xinkai Wei
Ming-Yu Liu
Antonio Torralba
Sanja Fidler
+ PDF Chat Gen-LaneNet: A Generalized and Scalable Approach for 3D Lane Detection 2020 Yuliang Guo
Guang Chen
Peitao Zhao
Weide Zhang
Jinghao Miao
Jingao Wang
Tae Eun Choe
+ PDF Chat Structured Bird’s-Eye-View Traffic Scene Understanding from Onboard Images 2021 Yiğit Baran Can
Alexander Liniger
Danda Pani Paudel
Luc Van Gool
+ Argoverse: 3D Tracking and Forecasting with Rich Maps 2019 Ming-Fang Chang
John Lambert
Patsorn Sangkloy
Jagjeet Singh
Sławomir Bąk
Andrew T. Hartnett
Wang De
Peter Carr
Simon Lucey
Deva Ramanan
+ PDF Chat MP3: A Unified Model to Map, Perceive, Predict and Plan 2021 Sergio Casas
Abbas Sadat
Raquel Urtasun
+ PDF Chat Flexible 3D Lane Detection by Hierarchical Shape Matching 2023 Zhihao Guan
Ruixin Liu
Zejian Yuan
Ao Liu
Tang Kun
Tong Zhou
Erlong Li
Chao Zheng
Shuqi Mei
+ DAGMapper: Learning to Map by Discovering Lane Topology. 2020 Namdar Homayounfar
Wei-Chiu Ma
Justin Liang
Xinyu Wu
Jack Fan
Raquel Urtasun