Comparative analysis of machine learning techniques for enhanced vehicle tracking and analysis

The past few years have seen a marvellous growth in technology and science. This rapid improvement has proven to be a blessing, making human life easier. Technological developments such as autonomous driving systems and electric cars have made it easier to travel in a dependable and economical manne...

Full description

Saved in:
Bibliographic Details
Main Authors: Seema Rani, Sandeep Dalal
Format: Article
Language:English
Published: Elsevier 2024-12-01
Series:Transportation Engineering
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666691X24000460
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1846117634220752896
author Seema Rani
Sandeep Dalal
author_facet Seema Rani
Sandeep Dalal
author_sort Seema Rani
collection DOAJ
description The past few years have seen a marvellous growth in technology and science. This rapid improvement has proven to be a blessing, making human life easier. Technological developments such as autonomous driving systems and electric cars have made it easier to travel in a dependable and economical manner, satisfying the increasing need for convenient and environmentally friendly travel. However, the increase in traffic has led to a surge in accidents and road casualties. Despite efforts to enhance automobile design and traffic control, there remains a significant need for implementing a system for vehicle tracking, accident detection, and notification. Delays in information and unfulfilled medical needs often result in the loss of lives following accidents. This study reviews and compares different automatic accident detection and notification systems that use accelerometers, vibration detectors, and GPS technology to notify registered contacts of an accident's location via SMS or email. The analysis that follows will specifically look at the benefits, drawbacks, and future uses of various technologies that are used in these systems. In this study, different machine learning-based methods for improving the accuracy of car tracking and cutting down on reaction times in accident situations will be looked at and compared. For testing their usefulness, we used deep learning models like CNN, SVM, and YOLOv3 on a number of different datasets. According to our data, these methods greatly enhance the accuracy of spotting, with YOLOv3 showing the best level of accuracy. Furthermore, the study talks about the pros, cons, and possible future uses of these technologies. It stresses the need for more research into improving model performance in different situations.
format Article
id doaj-art-578a017c807e42b7973c7fbfc3637709
institution Kabale University
issn 2666-691X
language English
publishDate 2024-12-01
publisher Elsevier
record_format Article
series Transportation Engineering
spelling doaj-art-578a017c807e42b7973c7fbfc36377092024-12-18T08:53:26ZengElsevierTransportation Engineering2666-691X2024-12-0118100271Comparative analysis of machine learning techniques for enhanced vehicle tracking and analysisSeema Rani0Sandeep Dalal1Corresponding author.; Department of Computer Science & Applications, Maharshi Dayanand University, Rohtak, Haryana, IndiaDepartment of Computer Science & Applications, Maharshi Dayanand University, Rohtak, Haryana, IndiaThe past few years have seen a marvellous growth in technology and science. This rapid improvement has proven to be a blessing, making human life easier. Technological developments such as autonomous driving systems and electric cars have made it easier to travel in a dependable and economical manner, satisfying the increasing need for convenient and environmentally friendly travel. However, the increase in traffic has led to a surge in accidents and road casualties. Despite efforts to enhance automobile design and traffic control, there remains a significant need for implementing a system for vehicle tracking, accident detection, and notification. Delays in information and unfulfilled medical needs often result in the loss of lives following accidents. This study reviews and compares different automatic accident detection and notification systems that use accelerometers, vibration detectors, and GPS technology to notify registered contacts of an accident's location via SMS or email. The analysis that follows will specifically look at the benefits, drawbacks, and future uses of various technologies that are used in these systems. In this study, different machine learning-based methods for improving the accuracy of car tracking and cutting down on reaction times in accident situations will be looked at and compared. For testing their usefulness, we used deep learning models like CNN, SVM, and YOLOv3 on a number of different datasets. According to our data, these methods greatly enhance the accuracy of spotting, with YOLOv3 showing the best level of accuracy. Furthermore, the study talks about the pros, cons, and possible future uses of these technologies. It stresses the need for more research into improving model performance in different situations.http://www.sciencedirect.com/science/article/pii/S2666691X24000460Vehicle trackingAccident detectionGPSGSMSMSIoT
spellingShingle Seema Rani
Sandeep Dalal
Comparative analysis of machine learning techniques for enhanced vehicle tracking and analysis
Transportation Engineering
Vehicle tracking
Accident detection
GPS
GSM
SMS
IoT
title Comparative analysis of machine learning techniques for enhanced vehicle tracking and analysis
title_full Comparative analysis of machine learning techniques for enhanced vehicle tracking and analysis
title_fullStr Comparative analysis of machine learning techniques for enhanced vehicle tracking and analysis
title_full_unstemmed Comparative analysis of machine learning techniques for enhanced vehicle tracking and analysis
title_short Comparative analysis of machine learning techniques for enhanced vehicle tracking and analysis
title_sort comparative analysis of machine learning techniques for enhanced vehicle tracking and analysis
topic Vehicle tracking
Accident detection
GPS
GSM
SMS
IoT
url http://www.sciencedirect.com/science/article/pii/S2666691X24000460
work_keys_str_mv AT seemarani comparativeanalysisofmachinelearningtechniquesforenhancedvehicletrackingandanalysis
AT sandeepdalal comparativeanalysisofmachinelearningtechniquesforenhancedvehicletrackingandanalysis