Visual analytics for aircraft identification
Computer vision has been used to tackle various problems in object recognition and image classification. In the air traffic control scene, the identification of aircraft is a process that can be automated with the advancement in computer vision solutions. This report aims to study and evaluate the e...
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sg-ntu-dr.10356-778672023-03-04T19:04:24Z Visual analytics for aircraft identification Yeo, Tiffany Yu Ling Sameer Alam School of Mechanical and Aerospace Engineering DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Computer vision has been used to tackle various problems in object recognition and image classification. In the air traffic control scene, the identification of aircraft is a process that can be automated with the advancement in computer vision solutions. This report aims to study and evaluate the effectiveness of 2 different image classification methods, SIFT and CNN, for identifying aircraft based on images and to subsequently propose a feasible implementation. Performance is primarily evaluated using the metric of accuracy, but other factors like ease of computation and implementation will be considered as well. For this project, we conducted a test on the feasibility of using SIFT as a feature extractor. However, the tests show that it is not able to draw accurate keypoints apart from the airline’s paintjob and hence is not a viable solution. We then develop and test implementations of MobileNet and find that it achieves impressive accuracies of 70.3%, 64.8%, and 47.7% for identification of manufacturer, family and variant respectively. Bachelor of Engineering (Aerospace Engineering) 2019-06-07T04:53:14Z 2019-06-07T04:53:14Z 2019 Final Year Project (FYP) http://hdl.handle.net/10356/77867 en Nanyang Technological University 57 p. application/pdf |
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DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Yeo, Tiffany Yu Ling Visual analytics for aircraft identification |
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Computer vision has been used to tackle various problems in object recognition and image classification. In the air traffic control scene, the identification of aircraft is a process that can be automated with the advancement in computer vision solutions. This report aims to study and evaluate the effectiveness of 2 different image classification methods, SIFT and CNN, for identifying aircraft based on images and to subsequently propose a feasible implementation. Performance is primarily evaluated using the metric of accuracy, but other factors like ease of computation and implementation will be considered as well. For this project, we conducted a test on the feasibility of using SIFT as a feature extractor. However, the tests show that it is not able to draw accurate keypoints apart from the airline’s paintjob and hence is not a viable solution. We then develop and test implementations of MobileNet and find that it achieves impressive accuracies of 70.3%, 64.8%, and 47.7% for identification of manufacturer, family and variant respectively. |
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Sameer Alam |
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Sameer Alam Yeo, Tiffany Yu Ling |
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Final Year Project |
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Yeo, Tiffany Yu Ling |
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Yeo, Tiffany Yu Ling |
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Visual analytics for aircraft identification |
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Visual analytics for aircraft identification |
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Visual analytics for aircraft identification |
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Visual analytics for aircraft identification |
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Visual analytics for aircraft identification |
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visual analytics for aircraft identification |
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2019 |
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http://hdl.handle.net/10356/77867 |
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1759853183669108736 |