Insights and Strategies for an Autonomous Vehicle With a Sensor Fusion Innovation: A Fictional Outlook

A few decades ago, the idea of a car driving without human assistance was something inconceivable. With the advent of deep learning-based machine learning in artificial intelligence, this imaginary idea has become part of our life. Like in other fields, these technological revolutions have brought d...

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Main Authors: Farrukh Hafeez, Usman Ullah Sheikh, Nasser Alkhaldi, Hassan Zuhair Al Garni, Zeeshan Ahmad Arfeen, Saifulnizam A. Khalid
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9145797/
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spelling doaj-1744ecfe229a4ad1bf2092db0c5cb6202021-03-30T03:25:37ZengIEEEIEEE Access2169-35362020-01-01813516213517510.1109/ACCESS.2020.30109409145797Insights and Strategies for an Autonomous Vehicle With a Sensor Fusion Innovation: A Fictional OutlookFarrukh Hafeez0Usman Ullah Sheikh1Nasser Alkhaldi2Hassan Zuhair Al Garni3https://orcid.org/0000-0002-2337-5847Zeeshan Ahmad Arfeen4https://orcid.org/0000-0002-7359-2743Saifulnizam A. Khalid5School of Electrical Engineering, Universiti Teknologi Malaysia, Johor Bahru, MalaysiaSchool of Electrical Engineering, Universiti Teknologi Malaysia, Johor Bahru, MalaysiaElectrical and Electronic Engineering Department, Jubail Industrial College, Jubail, Saudi ArabiaElectrical and Electronic Engineering Department, Jubail Industrial College, Jubail, Saudi ArabiaSchool of Electrical Engineering, Universiti Teknologi Malaysia, Johor Bahru, MalaysiaSchool of Electrical Engineering, Universiti Teknologi Malaysia, Johor Bahru, MalaysiaA few decades ago, the idea of a car driving without human assistance was something inconceivable. With the advent of deep learning-based machine learning in artificial intelligence, this imaginary idea has become part of our life. Like in other fields, these technological revolutions have brought drastic changes to the field of automated driving systems. The autonomous vehicle is in the transition state between level 3 and level 4 of automation, but many mysteries are still waiting to be solved. Understanding the environment as precisely as a human driver is still far in the future. To attain human perception requires the capturing of extensive surrounding information that depends on the onboard sensors installed on the vehicle. Because the recent autonomous vehicle is equipped with several sensors, it captures surrounding information in diverse forms. Combining these multi-domain data with sensor fusion is the open area of research that is considered in this paper. Along with sensor fusion, another area of prime importance that is necessary to be explored is the prediction of pedestrian intentions. Though the study of the prediction of a pedestrian's intentions started approximately fifteen years ago, most of the research is based on detection rather than intention. Furthermore, this paper also discusses related research in the field of prediction of the pedestrian's intentions. At the end of the article, this review paper includes open questions, challenges, and proposed solutions.https://ieeexplore.ieee.org/document/9145797/Advanced driver assistance systemdeep learningpedestrian intention predictionsensorsensor fusion
collection DOAJ
language English
format Article
sources DOAJ
author Farrukh Hafeez
Usman Ullah Sheikh
Nasser Alkhaldi
Hassan Zuhair Al Garni
Zeeshan Ahmad Arfeen
Saifulnizam A. Khalid
spellingShingle Farrukh Hafeez
Usman Ullah Sheikh
Nasser Alkhaldi
Hassan Zuhair Al Garni
Zeeshan Ahmad Arfeen
Saifulnizam A. Khalid
Insights and Strategies for an Autonomous Vehicle With a Sensor Fusion Innovation: A Fictional Outlook
IEEE Access
Advanced driver assistance system
deep learning
pedestrian intention prediction
sensor
sensor fusion
author_facet Farrukh Hafeez
Usman Ullah Sheikh
Nasser Alkhaldi
Hassan Zuhair Al Garni
Zeeshan Ahmad Arfeen
Saifulnizam A. Khalid
author_sort Farrukh Hafeez
title Insights and Strategies for an Autonomous Vehicle With a Sensor Fusion Innovation: A Fictional Outlook
title_short Insights and Strategies for an Autonomous Vehicle With a Sensor Fusion Innovation: A Fictional Outlook
title_full Insights and Strategies for an Autonomous Vehicle With a Sensor Fusion Innovation: A Fictional Outlook
title_fullStr Insights and Strategies for an Autonomous Vehicle With a Sensor Fusion Innovation: A Fictional Outlook
title_full_unstemmed Insights and Strategies for an Autonomous Vehicle With a Sensor Fusion Innovation: A Fictional Outlook
title_sort insights and strategies for an autonomous vehicle with a sensor fusion innovation: a fictional outlook
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description A few decades ago, the idea of a car driving without human assistance was something inconceivable. With the advent of deep learning-based machine learning in artificial intelligence, this imaginary idea has become part of our life. Like in other fields, these technological revolutions have brought drastic changes to the field of automated driving systems. The autonomous vehicle is in the transition state between level 3 and level 4 of automation, but many mysteries are still waiting to be solved. Understanding the environment as precisely as a human driver is still far in the future. To attain human perception requires the capturing of extensive surrounding information that depends on the onboard sensors installed on the vehicle. Because the recent autonomous vehicle is equipped with several sensors, it captures surrounding information in diverse forms. Combining these multi-domain data with sensor fusion is the open area of research that is considered in this paper. Along with sensor fusion, another area of prime importance that is necessary to be explored is the prediction of pedestrian intentions. Though the study of the prediction of a pedestrian's intentions started approximately fifteen years ago, most of the research is based on detection rather than intention. Furthermore, this paper also discusses related research in the field of prediction of the pedestrian's intentions. At the end of the article, this review paper includes open questions, challenges, and proposed solutions.
topic Advanced driver assistance system
deep learning
pedestrian intention prediction
sensor
sensor fusion
url https://ieeexplore.ieee.org/document/9145797/
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