Deep learning models for detection of explosive ordnance using autonomous robotic systems: trade-off between accuracy and real-time processing speed

The study focuses on deep learning models for real-time explosive ordnance detection (EO). This study aimed to evaluate and compare the performance of YOLOv8 and RT-DETR object detection models in terms of accuracy and speed for EO detection via autonomous robotic systems. The objectives are as foll...

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Main Authors: Vadym Mishchuk, Herman Fesenko, Vyacheslav Kharchenko
Format: Article
Language:English
Published: National Aerospace University «Kharkiv Aviation Institute» 2024-11-01
Series:Радіоелектронні і комп'ютерні системи
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Online Access:http://nti.khai.edu/ojs/index.php/reks/article/view/2653
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author Vadym Mishchuk
Herman Fesenko
Vyacheslav Kharchenko
author_facet Vadym Mishchuk
Herman Fesenko
Vyacheslav Kharchenko
author_sort Vadym Mishchuk
collection DOAJ
description The study focuses on deep learning models for real-time explosive ordnance detection (EO). This study aimed to evaluate and compare the performance of YOLOv8 and RT-DETR object detection models in terms of accuracy and speed for EO detection via autonomous robotic systems. The objectives are as follows: 1) conduct a comparative analysis of YOLOv8 and RT-DETR image processing models for explosive ordnance (EO) detection, focusing on accuracy and real-time processing speed;2) to explore the impact of different input image resolutions on model performance for identifying the optimal resolution for EO detection tasks;3) to analyze how object size (small, medium, large) affects detection efficiency for enhancing EO recognition accuracy; 4) to develop recommendations for EO detection model configurations; 5) to propose methods for enhancing EO detection model performance in complex environments. The following results were obtained. 1) The results of a comparative analysis of YOLOv8 and RT-DETR models for EO detection in the context of speed-accuracy trade-offs. 2) Recommendations for EO detection model configurations aimed at improving the efficiency of autonomous demining robotic systems, including optimal camera parameter selection. 3) Methods for improving EO detection model performance to increase its accuracy in complex environments, including synthetic data generation and confidence threshold tuning. Conclusions. The main contribution of this study is the results of a detailed evaluation of the YOLOv8 and RT-DETR models for real-time EO detection, helping to find trade-offs between the speed and accuracy of each model and emphasizing the need for special datasets and algorithm optimization to improve the reliability of EO detection in autonomous systems.
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institution Kabale University
issn 1814-4225
2663-2012
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publishDate 2024-11-01
publisher National Aerospace University «Kharkiv Aviation Institute»
record_format Article
series Радіоелектронні і комп'ютерні системи
spelling doaj-art-e56c73a854e84d39bebdd6106c798ecd2025-01-06T10:47:18ZengNational Aerospace University «Kharkiv Aviation Institute»Радіоелектронні і комп'ютерні системи1814-42252663-20122024-11-01202449911110.32620/reks.2024.4.092358Deep learning models for detection of explosive ordnance using autonomous robotic systems: trade-off between accuracy and real-time processing speedVadym Mishchuk0Herman Fesenko1Vyacheslav Kharchenko2National Aerospace University "Kharkiv Aviation Institute", KharkіvNational Aerospace University “Kharkiv Aviation Institute”, KharkivNational Aerospace University “Kharkiv Aviation Institute”, KharkivThe study focuses on deep learning models for real-time explosive ordnance detection (EO). This study aimed to evaluate and compare the performance of YOLOv8 and RT-DETR object detection models in terms of accuracy and speed for EO detection via autonomous robotic systems. The objectives are as follows: 1) conduct a comparative analysis of YOLOv8 and RT-DETR image processing models for explosive ordnance (EO) detection, focusing on accuracy and real-time processing speed;2) to explore the impact of different input image resolutions on model performance for identifying the optimal resolution for EO detection tasks;3) to analyze how object size (small, medium, large) affects detection efficiency for enhancing EO recognition accuracy; 4) to develop recommendations for EO detection model configurations; 5) to propose methods for enhancing EO detection model performance in complex environments. The following results were obtained. 1) The results of a comparative analysis of YOLOv8 and RT-DETR models for EO detection in the context of speed-accuracy trade-offs. 2) Recommendations for EO detection model configurations aimed at improving the efficiency of autonomous demining robotic systems, including optimal camera parameter selection. 3) Methods for improving EO detection model performance to increase its accuracy in complex environments, including synthetic data generation and confidence threshold tuning. Conclusions. The main contribution of this study is the results of a detailed evaluation of the YOLOv8 and RT-DETR models for real-time EO detection, helping to find trade-offs between the speed and accuracy of each model and emphasizing the need for special datasets and algorithm optimization to improve the reliability of EO detection in autonomous systems.http://nti.khai.edu/ojs/index.php/reks/article/view/2653explosive ordnanceobject detectionprecisionperformanceyolotransformers
spellingShingle Vadym Mishchuk
Herman Fesenko
Vyacheslav Kharchenko
Deep learning models for detection of explosive ordnance using autonomous robotic systems: trade-off between accuracy and real-time processing speed
Радіоелектронні і комп'ютерні системи
explosive ordnance
object detection
precision
performance
yolo
transformers
title Deep learning models for detection of explosive ordnance using autonomous robotic systems: trade-off between accuracy and real-time processing speed
title_full Deep learning models for detection of explosive ordnance using autonomous robotic systems: trade-off between accuracy and real-time processing speed
title_fullStr Deep learning models for detection of explosive ordnance using autonomous robotic systems: trade-off between accuracy and real-time processing speed
title_full_unstemmed Deep learning models for detection of explosive ordnance using autonomous robotic systems: trade-off between accuracy and real-time processing speed
title_short Deep learning models for detection of explosive ordnance using autonomous robotic systems: trade-off between accuracy and real-time processing speed
title_sort deep learning models for detection of explosive ordnance using autonomous robotic systems trade off between accuracy and real time processing speed
topic explosive ordnance
object detection
precision
performance
yolo
transformers
url http://nti.khai.edu/ojs/index.php/reks/article/view/2653
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AT hermanfesenko deeplearningmodelsfordetectionofexplosiveordnanceusingautonomousroboticsystemstradeoffbetweenaccuracyandrealtimeprocessingspeed
AT vyacheslavkharchenko deeplearningmodelsfordetectionofexplosiveordnanceusingautonomousroboticsystemstradeoffbetweenaccuracyandrealtimeprocessingspeed