Object detection in aerial images using Convolutional Neural Network (CNN) / Wan Nur Alya Athirah Wan Roshdee

Object detection in aerial images helps a wide range of defence and security agencies to monitor by recognising and identifying vehicles, monitoring essential facilities, and detecting potential hazards or suspicious activity. The article that related to this study were identified and described base...

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Main Author: Wan Roshdee, Wan Nur Alya Athirah
Format: Thesis
Language:English
Published: 2024
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Online Access:https://ir.uitm.edu.my/id/eprint/96288/1/96288.pdf
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spelling my-uitm-ir.962882024-06-04T07:20:21Z Object detection in aerial images using Convolutional Neural Network (CNN) / Wan Nur Alya Athirah Wan Roshdee 2024 Wan Roshdee, Wan Nur Alya Athirah Neural networks (Computer science) Object detection in aerial images helps a wide range of defence and security agencies to monitor by recognising and identifying vehicles, monitoring essential facilities, and detecting potential hazards or suspicious activity. The article that related to this study were identified and described based on the chosen algorithm, objectives, problems, and the significance. To solve this aim, several steps will be used including analysis, design, development, evaluation, and documentation phases. It also has been explained about the use of Convolutional Neural Network (CNN) in the project, the advantages and disadvantages, the implementation of the algorithm in various problem and similar works with the project title. The aerial image dataset is split into 60% training and 40% testing sets, pre-processed for resolution and pixel normalization. A CNN model is then implemented with Adam optimizer. The model's accuracy is recorded and saved for detecting cars in aerial images, evaluated by user input to ensure accurate identification of cars and absence of cars. This project has achieved its objective where the system can detect object (cars) in aerial images with the highest accuracy. CNN were used to train the model with a split of 60:40 with the highest accuracy among the test result is 68.42%. The model's performance depends on the task, dataset, architecture, and implementation. Despite the potential of CNN in certain cases, the study's use of a Sequential CNN model resulted in reduced accuracy, possibly due to task complexity or overfitting issues. 2024 Thesis https://ir.uitm.edu.my/id/eprint/96288/ https://ir.uitm.edu.my/id/eprint/96288/1/96288.pdf text en public degree Universiti Teknologi MARA, Terengganu College of Computing, Informatics and Media Noh, Zakiah
institution Universiti Teknologi MARA
collection UiTM Institutional Repository
language English
advisor Noh, Zakiah
topic Neural networks (Computer science)
spellingShingle Neural networks (Computer science)
Wan Roshdee, Wan Nur Alya Athirah
Object detection in aerial images using Convolutional Neural Network (CNN) / Wan Nur Alya Athirah Wan Roshdee
description Object detection in aerial images helps a wide range of defence and security agencies to monitor by recognising and identifying vehicles, monitoring essential facilities, and detecting potential hazards or suspicious activity. The article that related to this study were identified and described based on the chosen algorithm, objectives, problems, and the significance. To solve this aim, several steps will be used including analysis, design, development, evaluation, and documentation phases. It also has been explained about the use of Convolutional Neural Network (CNN) in the project, the advantages and disadvantages, the implementation of the algorithm in various problem and similar works with the project title. The aerial image dataset is split into 60% training and 40% testing sets, pre-processed for resolution and pixel normalization. A CNN model is then implemented with Adam optimizer. The model's accuracy is recorded and saved for detecting cars in aerial images, evaluated by user input to ensure accurate identification of cars and absence of cars. This project has achieved its objective where the system can detect object (cars) in aerial images with the highest accuracy. CNN were used to train the model with a split of 60:40 with the highest accuracy among the test result is 68.42%. The model's performance depends on the task, dataset, architecture, and implementation. Despite the potential of CNN in certain cases, the study's use of a Sequential CNN model resulted in reduced accuracy, possibly due to task complexity or overfitting issues.
format Thesis
qualification_level Bachelor degree
author Wan Roshdee, Wan Nur Alya Athirah
author_facet Wan Roshdee, Wan Nur Alya Athirah
author_sort Wan Roshdee, Wan Nur Alya Athirah
title Object detection in aerial images using Convolutional Neural Network (CNN) / Wan Nur Alya Athirah Wan Roshdee
title_short Object detection in aerial images using Convolutional Neural Network (CNN) / Wan Nur Alya Athirah Wan Roshdee
title_full Object detection in aerial images using Convolutional Neural Network (CNN) / Wan Nur Alya Athirah Wan Roshdee
title_fullStr Object detection in aerial images using Convolutional Neural Network (CNN) / Wan Nur Alya Athirah Wan Roshdee
title_full_unstemmed Object detection in aerial images using Convolutional Neural Network (CNN) / Wan Nur Alya Athirah Wan Roshdee
title_sort object detection in aerial images using convolutional neural network (cnn) / wan nur alya athirah wan roshdee
granting_institution Universiti Teknologi MARA, Terengganu
granting_department College of Computing, Informatics and Media
publishDate 2024
url https://ir.uitm.edu.my/id/eprint/96288/1/96288.pdf
_version_ 1804889982767202304