Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images)

With a surge in unauthorized drone intrusion incidents, counter-unmanned aerial vehicle (UAV) systems have become a key area of focus for civil airport authorities. Most commercial C-UAV systems use a combination of radar and sensors to detect and jam the radio signal between the operator and the dr...

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Main Author: Leong, Kai Feng
Other Authors: Lye Sun Woh
Format: Final Year Project
Language:English
Published: Nanyang Technological University 2022
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Online Access:https://hdl.handle.net/10356/158036
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1580362023-03-04T20:15:37Z Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images) Leong, Kai Feng Lye Sun Woh School of Mechanical and Aerospace Engineering MSWLYE@ntu.edu.sg Engineering::Aeronautical engineering With a surge in unauthorized drone intrusion incidents, counter-unmanned aerial vehicle (UAV) systems have become a key area of focus for civil airport authorities. Most commercial C-UAV systems use a combination of radar and sensors to detect and jam the radio signal between the operator and the drone. Information gathered by the system is fed back to a control center at the airport and disseminated to relevant parties. However, by the time the information is received by the air traffic controllers, the drone might have already crashed into an oncoming aircraft. Hence, there is a need for a program which is able to detect and track illegal drone intrusions and display it directly for the controllers to take immediate action e.g. cease all runway operations. In this report, a program was developed based on two deep learning based algorithms: (1) YOLOv4 and (2) DeepSORT. The first algorithm, YOLOv4 serves as the object detection model and outputs a series of detections per frame together with the confidence levels. The second algorithm, DeepSORT, serves as the object tracker which issues a numbered identity to each drone and tracks their historical trajectory path. The development involved extensive data collection and preparation through the use of the Tower Simulator in ATMRI to simulate drones in the vicinity of Singapore Changi Airport. Both of the algorithms were trained and evaluated against a set of videos of drones flying within Singapore Changi Airport. The YOLOv4 model achieved a mean Average Precision (mAP) score of 86.39% and offered good performance for detecting drones up to 4 kilometers. The same could be said for the object tracker, DeepSORT. However, there were some instances of identity switching which occurred as a result of intersecting paths between a ground-truth and a false positive. Both of the algorithms were observed to offer better performance when used in a multi-object scenario as opposed to a single object detection/tracking task. Generally, the performance of both algorithms suffer as the distance of the drone gets further away from the Changi Control Tower. Hence, it was suggested that a human air traffic controller is still required to verify the information sent by the program and determine the next course of action. Bachelor of Engineering (Aerospace Engineering) 2022-05-26T08:32:09Z 2022-05-26T08:32:09Z 2022 Final Year Project (FYP) Leong, K. F. (2022). Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images). Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/158036 https://hdl.handle.net/10356/158036 en C030 application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Aeronautical engineering
spellingShingle Engineering::Aeronautical engineering
Leong, Kai Feng
Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images)
description With a surge in unauthorized drone intrusion incidents, counter-unmanned aerial vehicle (UAV) systems have become a key area of focus for civil airport authorities. Most commercial C-UAV systems use a combination of radar and sensors to detect and jam the radio signal between the operator and the drone. Information gathered by the system is fed back to a control center at the airport and disseminated to relevant parties. However, by the time the information is received by the air traffic controllers, the drone might have already crashed into an oncoming aircraft. Hence, there is a need for a program which is able to detect and track illegal drone intrusions and display it directly for the controllers to take immediate action e.g. cease all runway operations. In this report, a program was developed based on two deep learning based algorithms: (1) YOLOv4 and (2) DeepSORT. The first algorithm, YOLOv4 serves as the object detection model and outputs a series of detections per frame together with the confidence levels. The second algorithm, DeepSORT, serves as the object tracker which issues a numbered identity to each drone and tracks their historical trajectory path. The development involved extensive data collection and preparation through the use of the Tower Simulator in ATMRI to simulate drones in the vicinity of Singapore Changi Airport. Both of the algorithms were trained and evaluated against a set of videos of drones flying within Singapore Changi Airport. The YOLOv4 model achieved a mean Average Precision (mAP) score of 86.39% and offered good performance for detecting drones up to 4 kilometers. The same could be said for the object tracker, DeepSORT. However, there were some instances of identity switching which occurred as a result of intersecting paths between a ground-truth and a false positive. Both of the algorithms were observed to offer better performance when used in a multi-object scenario as opposed to a single object detection/tracking task. Generally, the performance of both algorithms suffer as the distance of the drone gets further away from the Changi Control Tower. Hence, it was suggested that a human air traffic controller is still required to verify the information sent by the program and determine the next course of action.
author2 Lye Sun Woh
author_facet Lye Sun Woh
Leong, Kai Feng
format Final Year Project
author Leong, Kai Feng
author_sort Leong, Kai Feng
title Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images)
title_short Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images)
title_full Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images)
title_fullStr Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images)
title_full_unstemmed Deep learning based tools for drone surveillance and detection in aerodromes (dynamic images)
title_sort deep learning based tools for drone surveillance and detection in aerodromes (dynamic images)
publisher Nanyang Technological University
publishDate 2022
url https://hdl.handle.net/10356/158036
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