Multi-Vehicle Trajectory Prediction at Intersections using State and
Intention Information
- URL: http://arxiv.org/abs/2301.02561v1
- Date: Fri, 6 Jan 2023 15:13:23 GMT
- Title: Multi-Vehicle Trajectory Prediction at Intersections using State and
Intention Information
- Authors: Dekai Zhu, Qadeer Khan, Daniel Cremers
- Abstract summary: Traditional approaches to prediction of future trajectory of road agents rely on knowing information about their past trajectory.
This work instead relies on having knowledge of the current state and intended direction to make predictions for multiple vehicles at intersections.
Message passing of this information between the vehicles provides each one of them a more holistic overview of the environment.
- Score: 50.40632021583213
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Traditional approaches to prediction of future trajectory of road agents rely
on knowing information about their past trajectory. This work rather relies
only on having knowledge of the current state and intended direction to make
predictions for multiple vehicles at intersections. Furthermore, message
passing of this information between the vehicles provides each one of them a
more holistic overview of the environment allowing for a more informed
prediction. This is done by training a neural network which takes the state and
intent of the multiple vehicles to predict their future trajectory. Using the
intention as an input allows our approach to be extended to additionally
control the multiple vehicles to drive towards desired paths. Experimental
results demonstrate the robustness of our approach both in terms of trajectory
prediction and vehicle control at intersections. The complete training and
evaluation code for this work is available here:
\url{https://github.com/Dekai21/Multi_Agent_Intersection}.
Related papers
- Multimodal Trajectory Prediction for Autonomous Driving on Unstructured Roads using Deep Convolutional Network [15.950227451262919]
The application of autonomous driving in open-pit mining has garnered increasing attention for achieving safe and efficient transportation.
A method is proposed to predict multiple possible trajectories and their probabilities of the target vehicle.
The method underwent offline testing on a dataset specifically designed for autonomous driving scenarios in open-pit mining.
arXiv Detail & Related papers (2024-09-27T02:29:02Z) - BEVSeg2TP: Surround View Camera Bird's-Eye-View Based Joint Vehicle
Segmentation and Ego Vehicle Trajectory Prediction [4.328789276903559]
Trajectory prediction is a key task for vehicle autonomy.
There is a growing interest in learning-based trajectory prediction.
We show that there is the potential to improve the performance of perception.
arXiv Detail & Related papers (2023-12-20T15:02:37Z) - Trajectory-Prediction with Vision: A Survey [0.0]
Trajectory prediction is an extremely challenging task which recently gained a lot of attention in the autonomous vehicle research community.
A good prediction model can prevent collisions on the road, and hence the ultimate goal for autonomous vehicles: Collision rate: collisions per Million miles.
We categorize the relevant algorithms into different classes so that researchers can follow through the trends in the trajectory-prediction research field.
arXiv Detail & Related papers (2023-03-15T01:06:54Z) - Behavioral Intention Prediction in Driving Scenes: A Survey [70.53285924851767]
Behavioral Intention Prediction (BIP) simulates a human consideration process and fulfills the early prediction of specific behaviors.
This work provides a comprehensive review of BIP from the available datasets, key factors and challenges, pedestrian-centric and vehicle-centric BIP approaches, and BIP-aware applications.
arXiv Detail & Related papers (2022-11-01T11:07:37Z) - Multi-modal Transformer Path Prediction for Autonomous Vehicle [15.729029675380083]
We propose a path prediction system named Multi-modal Transformer Path Prediction (MTPP) that aims to predict long-term future trajectory of target agents.
To achieve more accurate path prediction, the Transformer architecture is adopted in our model.
An extensive evaluation is conducted to show the efficacy of the proposed system using nuScene, a real-world trajectory forecasting dataset.
arXiv Detail & Related papers (2022-08-15T15:09:26Z) - Safety-aware Motion Prediction with Unseen Vehicles for Autonomous
Driving [104.32241082170044]
We study a new task, safety-aware motion prediction with unseen vehicles for autonomous driving.
Unlike the existing trajectory prediction task for seen vehicles, we aim at predicting an occupancy map.
Our approach is the first one that can predict the existence of unseen vehicles in most cases.
arXiv Detail & Related papers (2021-09-03T13:33:33Z) - Injecting Knowledge in Data-driven Vehicle Trajectory Predictors [82.91398970736391]
Vehicle trajectory prediction tasks have been commonly tackled from two perspectives: knowledge-driven or data-driven.
In this paper, we propose to learn a "Realistic Residual Block" (RRB) which effectively connects these two perspectives.
Our proposed method outputs realistic predictions by confining the residual range and taking into account its uncertainty.
arXiv Detail & Related papers (2021-03-08T16:03:09Z) - TNT: Target-driveN Trajectory Prediction [76.21200047185494]
We develop a target-driven trajectory prediction framework for moving agents.
We benchmark it on trajectory prediction of vehicles and pedestrians.
We outperform state-of-the-art on Argoverse Forecasting, INTERACTION, Stanford Drone and an in-house Pedestrian-at-Intersection dataset.
arXiv Detail & Related papers (2020-08-19T06:52:46Z) - Probabilistic Multi-modal Trajectory Prediction with Lane Attention for
Autonomous Vehicles [10.485790589381704]
Trajectory prediction is crucial for autonomous vehicles.
We propose a novel instance-aware representation for lane representation.
We show that the proposed lane representation together with the lane attention module can be integrated into the widely used encoder-decoder framework.
arXiv Detail & Related papers (2020-07-06T07:57:23Z) - TPNet: Trajectory Proposal Network for Motion Prediction [81.28716372763128]
Trajectory Proposal Network (TPNet) is a novel two-stage motion prediction framework.
TPNet first generates a candidate set of future trajectories as hypothesis proposals, then makes the final predictions by classifying and refining the proposals.
Experiments on four large-scale trajectory prediction datasets, show that TPNet achieves the state-of-the-art results both quantitatively and qualitatively.
arXiv Detail & Related papers (2020-04-26T00:01:49Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.