Machine Learning for Autonomous Vehicle's Trajectory Prediction: A
comprehensive survey, Challenges, and Future Research Directions
- URL: http://arxiv.org/abs/2307.07527v1
- Date: Wed, 12 Jul 2023 10:20:19 GMT
- Title: Machine Learning for Autonomous Vehicle's Trajectory Prediction: A
comprehensive survey, Challenges, and Future Research Directions
- Authors: Vibha Bharilya, Neetesh Kumar
- Abstract summary: 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.
- Score: 3.655021726150368
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Autonomous Vehicles (AVs) have emerged as a promising solution by replacing
human drivers with advanced computer-aided decision-making systems. However,
for AVs to effectively navigate the road, they must possess the capability to
predict the future behavior of nearby traffic participants, similar to the
predictive driving abilities of human drivers. Building upon existing
literature is crucial to advance the field and develop a comprehensive
understanding of trajectory prediction methods in the context of automated
driving. To address this need, we have undertaken a comprehensive review that
focuses on trajectory prediction methods for AVs, with a particular emphasis on
machine learning techniques including deep learning and reinforcement
learning-based approaches. We have extensively examined over two hundred
studies related to trajectory prediction in the context of AVs. The paper
begins with an introduction to the general problem of predicting vehicle
trajectories and provides an overview of the key concepts and terminology used
throughout. After providing a brief overview of conventional methods, this
review conducts a comprehensive evaluation of several deep learning-based
techniques. Each method is summarized briefly, accompanied by a detailed
analysis of its strengths and weaknesses. The discussion further extends to
reinforcement learning-based methods. This article also examines the various
datasets and evaluation metrics that are commonly used in trajectory prediction
tasks. Encouraging an unbiased and objective discussion, we compare two major
learning processes, considering specific functional features. 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.
Related papers
- Human Action Anticipation: A Survey [86.415721659234]
The literature on behavior prediction spans various tasks, including action anticipation, activity forecasting, intent prediction, goal prediction, and so on.
Our survey aims to tie together this fragmented literature, covering recent technical innovations as well as the development of new large-scale datasets for model training and evaluation.
arXiv Detail & Related papers (2024-10-17T21:37:40Z) - Certified Human Trajectory Prediction [66.1736456453465]
Tray prediction plays an essential role in autonomous vehicles.
We propose a certification approach tailored for the task of trajectory prediction.
We address the inherent challenges associated with trajectory prediction, including unbounded outputs, and mutli-modality.
arXiv Detail & Related papers (2024-03-20T17:41:35Z) - End-to-end Autonomous Driving using Deep Learning: A Systematic Review [0.0]
End-to-end autonomous driving is a fully differentiable machine learning system that takes raw sensor input data and other metadata as prior information and directly outputs the ego vehicle's control signals or planned trajectories.
This paper attempts to systematically review all recent Machine Learning-based techniques to perform this end-to-end task, including, but not limited to, object detection, semantic scene understanding, object tracking, trajectory predictions, trajectory planning, vehicle control, social behavior, and communications.
arXiv Detail & Related papers (2023-08-27T17:43:58Z) - Recent Advancements in End-to-End Autonomous Driving using Deep
Learning: A Survey [9.385936248154987]
End-to-End driving is a promising paradigm as it circumvents the drawbacks associated with modular systems.
Recent developments in End-to-End autonomous driving are analyzed, and research is categorized based on underlying principles.
This paper assesses the state-of-the-art, identifies challenges, and explores future possibilities.
arXiv Detail & Related papers (2023-07-10T07:00:06Z) - 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) - 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) - Deep Learning for Road Traffic Forecasting: Does it Make a Difference? [6.220008946076208]
This paper focuses on critically analyzing the state of the art in what refers to the use of Deep Learning for this particular ITS research area.
A posterior critical analysis is held to formulate questions and trigger a necessary debate about the issues of Deep Learning for traffic forecasting.
arXiv Detail & Related papers (2020-12-02T15:56:11Z) - Deep Learning on Traffic Prediction: Methods, Analysis and Future
Directions [32.25707921285397]
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.
arXiv Detail & Related papers (2020-04-18T08:28:10Z) - PiP: Planning-informed Trajectory Prediction for Autonomous Driving [69.41885900996589]
We propose planning-informed trajectory prediction (PiP) to tackle the prediction problem in the multi-agent setting.
By informing the prediction process with the planning of ego vehicle, our method achieves the state-of-the-art performance of multi-agent forecasting on highway datasets.
arXiv Detail & Related papers (2020-03-25T16:09:54Z)
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.