Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman
Chest x-ray image analysis is the common medical imaging exam needed to assess different pathologies. Having an automated solution for the analysis can contribute to minimizing the workloads, improve efficiency and reduce the potential of reading errors. Many methods have been proposed to address ch...
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2019
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Online Access: | https://ir.uitm.edu.my/id/eprint/43820/1/43820.pdf https://ir.uitm.edu.my/id/eprint/43820/ https://mjoc.uitm.edu.my |
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my.uitm.ir.438202022-06-14T02:53:31Z https://ir.uitm.edu.my/id/eprint/43820/ Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman Rahmat, Taufik Ismail, Azlan Aliman, Sharifah X-rays Chest x-ray image analysis is the common medical imaging exam needed to assess different pathologies. Having an automated solution for the analysis can contribute to minimizing the workloads, improve efficiency and reduce the potential of reading errors. Many methods have been proposed to address chest x-ray image classification and detection. However, the application of regional-based convolutional neural networks (CNN) is currently limited. Thus, we propose an approach to classify chest x-ray images into either one of two categories, pathological or normal based on Faster Regional-CNN model. This model utilizes Region Proposal Network (RPN) to generate region proposals and perform image classification. By applying this model, we can potentially achieve two key goals, high confidence in the classification and reducing the computation time. The results show the applied model achieved higher accuracy as compared to the medical representatives on the random chest x-ray images. The classification model is also reasonably effective in classifying between finding and normal chest x-ray image captured through a live webcam. Universiti Teknologi MARA Press (Penerbit UiTM) 2019-06 Article PeerReviewed text en https://ir.uitm.edu.my/id/eprint/43820/1/43820.pdf Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman. (2019) Malaysian Journal of Computing (MJoC), 4 (1). pp. 225-236. ISSN 2600-8238 https://mjoc.uitm.edu.my |
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X-rays Rahmat, Taufik Ismail, Azlan Aliman, Sharifah Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman |
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Chest x-ray image analysis is the common medical imaging exam needed to assess different pathologies. Having an automated solution for the analysis can contribute to minimizing the workloads, improve efficiency and reduce the potential of reading errors. Many methods have been proposed to address chest x-ray image classification and detection. However, the application of regional-based convolutional neural networks (CNN) is currently limited. Thus, we propose an approach to classify chest x-ray images into either one of two categories, pathological or normal based on Faster Regional-CNN model. This model utilizes Region Proposal Network (RPN) to generate region proposals and perform image classification. By applying this model, we can potentially achieve two key goals, high confidence in the classification and reducing the computation time. The results show the applied model achieved higher accuracy as compared to the medical representatives on the random chest x-ray images. The classification model is also reasonably effective in classifying between finding and normal chest x-ray image captured through a live webcam. |
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Article |
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Rahmat, Taufik Ismail, Azlan Aliman, Sharifah |
author_facet |
Rahmat, Taufik Ismail, Azlan Aliman, Sharifah |
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Rahmat, Taufik |
title |
Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman |
title_short |
Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman |
title_full |
Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman |
title_fullStr |
Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman |
title_full_unstemmed |
Chest x-ray image classification using faster R-CNN / Taufik Rahmat, Azlan Ismail and Sharifah Aliman |
title_sort |
chest x-ray image classification using faster r-cnn / taufik rahmat, azlan ismail and sharifah aliman |
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Universiti Teknologi MARA Press (Penerbit UiTM) |
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2019 |
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https://ir.uitm.edu.my/id/eprint/43820/1/43820.pdf https://ir.uitm.edu.my/id/eprint/43820/ https://mjoc.uitm.edu.my |
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