Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient.

An autonomous car is a one-of-a-kind specimen in today's technology. It is an automatic system in which most of the duties that humans undertake in the car can be done automatically with minimum human supervision for road safety features. Moving automobile detections, on the other hand, are pro...

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Main Authors: Yee, Lai Kok, Mohd. Yusoff, Muhammad Syahmi, Ken, Tan Lit, Asako, Yutaka, Quen, Lee Kee, Kang, Hooi-Siang, Siang, Gan Yee, Chuan, Zun-Liang, Tey, Wah Yen, Zahari, Abdul Muhaimin, Hoo, Kok Chee
Format: Article
Language:English
Published: Semarak Ilmu Publishing 2023
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Online Access:http://eprints.utm.my/106051/1/LaiKokYee2023_VelocityAnalysisonMovingObjectsDetection.pdf
http://eprints.utm.my/106051/
http://dx.doi.org/10.37934/aram.109.1.3543
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spelling my.utm.1060512024-05-29T06:54:12Z http://eprints.utm.my/106051/ Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient. Yee, Lai Kok Mohd. Yusoff, Muhammad Syahmi Ken, Tan Lit Asako, Yutaka Quen, Lee Kee Kang, Hooi-Siang Siang, Gan Yee Chuan, Zun-Liang Tey, Wah Yen Zahari, Abdul Muhaimin Hoo, Kok Chee TJ Mechanical engineering and machinery An autonomous car is a one-of-a-kind specimen in today's technology. It is an automatic system in which most of the duties that humans undertake in the car can be done automatically with minimum human supervision for road safety features. Moving automobile detections, on the other hand, are prone to more mistakes and can result in undesirable situations such as minor car wrecks. Moving vehicle identification is now done using high-speed cameras or LiDAR, for example, whereas self-driving cars are produced with deep learning, which requires much larger datasets. As a result, there may be greater space for improvement in the moving vehicle detection model. This research intends to create another moving car recognition model that uses multi-scale feature-based detection to improve the model's accuracy while also determining the maximum speed at which the model can detect moving objects. The recommended methodology was to create a lab-scale model that can be used as a guide for video and image capture on the lab-scale model, as well as the speed of the toy vehicles captured from the Arduino Uno machine before testing the car recognition model. According to the data, Multi-Scale Histogram of Oriented Gradient can recognize more objects than Histogram of Oriented Gradient with higher object identification accuracies and precision. Semarak Ilmu Publishing 2023-09 Article PeerReviewed application/pdf en http://eprints.utm.my/106051/1/LaiKokYee2023_VelocityAnalysisonMovingObjectsDetection.pdf Yee, Lai Kok and Mohd. Yusoff, Muhammad Syahmi and Ken, Tan Lit and Asako, Yutaka and Quen, Lee Kee and Kang, Hooi-Siang and Siang, Gan Yee and Chuan, Zun-Liang and Tey, Wah Yen and Zahari, Abdul Muhaimin and Hoo, Kok Chee (2023) Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient. Journal of Advanced Research in Applied Mechanics, 109 (1). pp. 35-43. ISSN 2289-7895 http://dx.doi.org/10.37934/aram.109.1.3543 DOI: 10.37934/aram.109.1.3543
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Yee, Lai Kok
Mohd. Yusoff, Muhammad Syahmi
Ken, Tan Lit
Asako, Yutaka
Quen, Lee Kee
Kang, Hooi-Siang
Siang, Gan Yee
Chuan, Zun-Liang
Tey, Wah Yen
Zahari, Abdul Muhaimin
Hoo, Kok Chee
Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient.
description An autonomous car is a one-of-a-kind specimen in today's technology. It is an automatic system in which most of the duties that humans undertake in the car can be done automatically with minimum human supervision for road safety features. Moving automobile detections, on the other hand, are prone to more mistakes and can result in undesirable situations such as minor car wrecks. Moving vehicle identification is now done using high-speed cameras or LiDAR, for example, whereas self-driving cars are produced with deep learning, which requires much larger datasets. As a result, there may be greater space for improvement in the moving vehicle detection model. This research intends to create another moving car recognition model that uses multi-scale feature-based detection to improve the model's accuracy while also determining the maximum speed at which the model can detect moving objects. The recommended methodology was to create a lab-scale model that can be used as a guide for video and image capture on the lab-scale model, as well as the speed of the toy vehicles captured from the Arduino Uno machine before testing the car recognition model. According to the data, Multi-Scale Histogram of Oriented Gradient can recognize more objects than Histogram of Oriented Gradient with higher object identification accuracies and precision.
format Article
author Yee, Lai Kok
Mohd. Yusoff, Muhammad Syahmi
Ken, Tan Lit
Asako, Yutaka
Quen, Lee Kee
Kang, Hooi-Siang
Siang, Gan Yee
Chuan, Zun-Liang
Tey, Wah Yen
Zahari, Abdul Muhaimin
Hoo, Kok Chee
author_facet Yee, Lai Kok
Mohd. Yusoff, Muhammad Syahmi
Ken, Tan Lit
Asako, Yutaka
Quen, Lee Kee
Kang, Hooi-Siang
Siang, Gan Yee
Chuan, Zun-Liang
Tey, Wah Yen
Zahari, Abdul Muhaimin
Hoo, Kok Chee
author_sort Yee, Lai Kok
title Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient.
title_short Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient.
title_full Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient.
title_fullStr Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient.
title_full_unstemmed Velocity analysis on moving objects detection using multi-scale histogram of oriented gradient.
title_sort velocity analysis on moving objects detection using multi-scale histogram of oriented gradient.
publisher Semarak Ilmu Publishing
publishDate 2023
url http://eprints.utm.my/106051/1/LaiKokYee2023_VelocityAnalysisonMovingObjectsDetection.pdf
http://eprints.utm.my/106051/
http://dx.doi.org/10.37934/aram.109.1.3543
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score 13.160551