2022
DOI: 10.46810/tdfd.1112957
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Railway Security System Design by Image Processing and Deep Learning Unmanned Aerial Vehicle

Abstract: With the developing technology, technological blessings make human life easier and help them every day. Unmanned aerial vehicles (UAV), which is one of the technological blessings, have shown themselves in many fields, especially in fields such as the military, defense industry, photography, and hobby. With the development of defense systems with UAVs, the security of railways has also been left to UAVs. In this study, while the foreign matter separation is made on the railway by using the deep learning model … Show more

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Cited by 2 publications
(2 citation statements)
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References 21 publications
(25 reference statements)
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“…The drawbacks of cloud computing necessitated the need for an edge computing model that is faster than cloud computing and can route tasks intelligently to meet quality of service. Edge computing has been a popular choice in recent times to reduce network transmission delays [28]- [30] since it is more tolerant of poor network connectivity [31], [32].…”
Section: Edge Computing Paradigm and Transport Industrymentioning
confidence: 99%
“…The drawbacks of cloud computing necessitated the need for an edge computing model that is faster than cloud computing and can route tasks intelligently to meet quality of service. Edge computing has been a popular choice in recent times to reduce network transmission delays [28]- [30] since it is more tolerant of poor network connectivity [31], [32].…”
Section: Edge Computing Paradigm and Transport Industrymentioning
confidence: 99%
“…In a study based on a single-stage target detection algorithm, Ding et al [26] and Eylence et al [27] used the YOLOv5 model for foreign object detection, respectively, with good results; Some researchers have combined basic target detection algorithms with attention mechanisms for detection [28], [29], [3], [30].…”
Section: Related Work a The Detection Of Foreign Bodiesmentioning
confidence: 99%