Object detection in x-ray images using transfer learning with data augmentation
Object detection in X-ray images is an interesting problem in the field of machine vision. The reason is that images from an X-ray machine are usually obstructed with other objects and to itself, therefore object classification and localization is a challenging task. Furthermore, obtaining X-ray dat...
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oai:animorepository.dlsu.edu.ph:faculty_research-40202021-11-19T08:11:45Z Object detection in x-ray images using transfer learning with data augmentation Galvez, Reagan L. Dadios, Elmer P. Bandala, Argel A. Vicerra, Ryan Rhay P. Object detection in X-ray images is an interesting problem in the field of machine vision. The reason is that images from an X-ray machine are usually obstructed with other objects and to itself, therefore object classification and localization is a challenging task. Furthermore, obtaining X-ray data is difficult due to an insufficient dataset available compared with photographic images from a digital camera. It is vital to easily detect objects in an X-ray image because it can be used as decision support in the detection of threat items such as improvised explosive devices (IED's) in airports, train stations, and public places. Detection of IED components accurately requires an expert and can be achieved through extensive training. Also, manual inspection is tedious, and the probability of missed detection increases due to several pieces of baggage are scanned in a short period of time. As a solution, this paper used different object detection techniques (Faster R-CNN, SSD, R-FCN) and feature extractors (ResNet, MobileNet, Inception, Inception-ResNet) based on convolutional neural networks (CNN) in a novel IEDXray dataset in the detection of IED components. The IEDXray dataset is an X-ray image of IED replicas without the explosive material. Transfer learning with data augmentation was performed due to limited X-ray data available to train the whole network from scratch. Evaluation results showed that individual detection achieved 99.08% average precision (AP) in mortar detection and 77.29% mAP in three IED components. © Insight Society. 2019-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/3021 Faculty Research Work Animo Repository Image converters Transfer learning (Machine learning) X-rays Neural networks (Computer science) Electrical and Computer Engineering |
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Image converters Transfer learning (Machine learning) X-rays Neural networks (Computer science) Electrical and Computer Engineering Galvez, Reagan L. Dadios, Elmer P. Bandala, Argel A. Vicerra, Ryan Rhay P. Object detection in x-ray images using transfer learning with data augmentation |
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Object detection in X-ray images is an interesting problem in the field of machine vision. The reason is that images from an X-ray machine are usually obstructed with other objects and to itself, therefore object classification and localization is a challenging task. Furthermore, obtaining X-ray data is difficult due to an insufficient dataset available compared with photographic images from a digital camera. It is vital to easily detect objects in an X-ray image because it can be used as decision support in the detection of threat items such as improvised explosive devices (IED's) in airports, train stations, and public places. Detection of IED components accurately requires an expert and can be achieved through extensive training. Also, manual inspection is tedious, and the probability of missed detection increases due to several pieces of baggage are scanned in a short period of time. As a solution, this paper used different object detection techniques (Faster R-CNN, SSD, R-FCN) and feature extractors (ResNet, MobileNet, Inception, Inception-ResNet) based on convolutional neural networks (CNN) in a novel IEDXray dataset in the detection of IED components. The IEDXray dataset is an X-ray image of IED replicas without the explosive material. Transfer learning with data augmentation was performed due to limited X-ray data available to train the whole network from scratch. Evaluation results showed that individual detection achieved 99.08% average precision (AP) in mortar detection and 77.29% mAP in three IED components. © Insight Society. |
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Galvez, Reagan L. Dadios, Elmer P. Bandala, Argel A. Vicerra, Ryan Rhay P. |
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Galvez, Reagan L. Dadios, Elmer P. Bandala, Argel A. Vicerra, Ryan Rhay P. |
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Galvez, Reagan L. |
title |
Object detection in x-ray images using transfer learning with data augmentation |
title_short |
Object detection in x-ray images using transfer learning with data augmentation |
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Object detection in x-ray images using transfer learning with data augmentation |
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Object detection in x-ray images using transfer learning with data augmentation |
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Object detection in x-ray images using transfer learning with data augmentation |
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object detection in x-ray images using transfer learning with data augmentation |
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Animo Repository |
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2019 |
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https://animorepository.dlsu.edu.ph/faculty_research/3021 |
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