Deep Learning on Traffic Prediction: Methods, Analysis and Future
Directions
- URL: http://arxiv.org/abs/2004.08555v4
- Date: Fri, 19 Mar 2021 01:40:26 GMT
- Title: Deep Learning on Traffic Prediction: Methods, Analysis and Future
Directions
- Authors: Xueyan Yin, Genze Wu, Jinze Wei, Yanming Shen, Heng Qi, and Baocai Yin
- Abstract summary: This paper provides a comprehensive survey on deep learning-based approaches in traffic prediction from multiple perspectives.
We first summarize the existing traffic prediction methods, and give a taxonomy.
Second, we list the state-of-the-art approaches in different traffic prediction applications.
- Score: 32.25707921285397
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Traffic prediction plays an essential role in intelligent transportation
system. Accurate traffic prediction can assist route planing, guide vehicle
dispatching, and mitigate traffic congestion. This problem is challenging due
to the complicated and dynamic spatio-temporal dependencies between different
regions in the road network. Recently, a significant amount of research efforts
have been devoted to this area, especially deep learning method, greatly
advancing traffic prediction abilities. The purpose of this paper is to provide
a comprehensive survey on deep learning-based approaches in traffic prediction
from multiple perspectives. Specifically, we first summarize the existing
traffic prediction methods, and give a taxonomy. Second, we list the
state-of-the-art approaches in different traffic prediction applications.
Third, we comprehensively collect and organize widely used public datasets in
the existing literature to facilitate other researchers. Furthermore, we give
an evaluation and analysis by conducting extensive experiments to compare the
performance of different methods on a real-world public dataset. Finally, we
discuss open challenges in this field.
Related papers
- TrafPS: A Shapley-based Visual Analytics Approach to Interpret Traffic [39.8945062366245]
TrafPS is a visual analytics approach for interpreting traffic prediction outcomes to support decision-making in traffic management and urban planning.
Based on the task requirement from the domain experts, we employ an interactive visual interface for multi-aspect exploration and analysis of significant flow patterns.
Two real-world case studies demonstrate the effectiveness of TrafPS in identifying key routes and decision-making support for urban planning.
arXiv Detail & Related papers (2024-03-07T01:00:55Z) - Machine Learning for Autonomous Vehicle's Trajectory Prediction: A
comprehensive survey, Challenges, and Future Research Directions [3.655021726150368]
We have examined over two hundred studies related to trajectory prediction in the context of AVs.
This review conducts a comprehensive evaluation of several deep learning-based techniques.
By identifying challenges in the existing literature and outlining potential research directions, this review significantly contributes to the advancement of knowledge in the domain of AV trajectory prediction.
arXiv Detail & Related papers (2023-07-12T10:20:19Z) - Traffic Prediction using Artificial Intelligence: Review of Recent
Advances and Emerging Opportunities [2.5199066832791535]
This survey aims to provide a comprehensive overview of traffic prediction methodologies.
Specifically, we focus on the recent advances and emerging research opportunities in Artificial Intelligence (AI)-based traffic prediction methods.
arXiv Detail & Related papers (2023-05-31T06:25:19Z) - Multi-Vehicle Trajectory Prediction at Intersections using State and
Intention Information [50.40632021583213]
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.
arXiv Detail & Related papers (2023-01-06T15:13:23Z) - 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) - Multistep traffic speed prediction: A deep learning based approach using
latent space mapping considering spatio-temporal dependencies [2.3204178451683264]
ITS requires a reliable traffic prediction that can provide accurate traffic prediction at multiple time steps based on past and current traffic data.
A deep learning based approach has been developed using both the spatial and temporal dependencies.
It has been found that the proposed approach provides accurate traffic prediction results even for 60-min ahead prediction with least error.
arXiv Detail & Related papers (2021-11-03T10:17:48Z) - Road Network Guided Fine-Grained Urban Traffic Flow Inference [108.64631590347352]
Accurate inference of fine-grained traffic flow from coarse-grained one is an emerging yet crucial problem.
We propose a novel Road-Aware Traffic Flow Magnifier (RATFM) that exploits the prior knowledge of road networks.
Our method can generate high-quality fine-grained traffic flow maps.
arXiv Detail & Related papers (2021-09-29T07:51:49Z) - End-to-End Intersection Handling using Multi-Agent Deep Reinforcement
Learning [63.56464608571663]
Navigating through intersections is one of the main challenging tasks for an autonomous vehicle.
In this work, we focus on the implementation of a system able to navigate through intersections where only traffic signs are provided.
We propose a multi-agent system using a continuous, model-free Deep Reinforcement Learning algorithm used to train a neural network for predicting both the acceleration and the steering angle at each time step.
arXiv Detail & Related papers (2021-04-28T07:54:40Z) - Divide-and-Conquer for Lane-Aware Diverse Trajectory Prediction [71.97877759413272]
Trajectory prediction is a safety-critical tool for autonomous vehicles to plan and execute actions.
Recent methods have achieved strong performances using Multi-Choice Learning objectives like winner-takes-all (WTA) or best-of-many.
Our work addresses two key challenges in trajectory prediction, learning outputs, and better predictions by imposing constraints using driving knowledge.
arXiv Detail & Related papers (2021-04-16T17:58:56Z) - Pedestrian Action Anticipation using Contextual Feature Fusion in
Stacked RNNs [19.13270454742958]
We propose a solution for the problem of pedestrian action anticipation at the point of crossing.
Our approach uses a novel stacked RNN architecture in which information collected from various sources, both scene dynamics and visual features, is gradually fused into the network.
arXiv Detail & Related papers (2020-05-13T20:59:37Z) - 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.