Detection of Specular Reflection from Smart Colposcopy Image using RGB Color Space and Convolutional Neural Network
Detection of Specular Reflection from Smart Colposcopy Image using RGB Color Space and Convolutional Neural Network |
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© 2023 by IJETT Journal | ||
Volume-71 Issue-10 |
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Year of Publication : 2023 | ||
Author : Jennyfer Susan M B, Subashini P, Krishnaveni M, Indhumathi T |
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DOI : 10.14445/22315381/IJETT-V71I10P204 |
How to Cite?
Jennyfer Susan M B, Subashini P, Krishnaveni M, Indhumathi T, "Detection of Specular Reflection from Smart Colposcopy Image using RGB Color Space and Convolutional Neural Network," International Journal of Engineering Trends and Technology, vol. 71, no. 10, pp. 29-38, 2023. Crossref, https://doi.org/10.14445/22315381/IJETT-V71I10P204
Abstract
Cervical cancer is a prevalent malignancy among women, particularly in developing nations with high fatality rates. Screening for cervical cancer often involves the use of smart colposcopy, which captures images of the cervix. However, specular reflection frequently affects these images, resulting in bright pixels that obscure neoplasm on the cervical images. To address this issue, proposed an intensity-based threshold method on RGB color space to identify specular reflection in smart colposcopy images. The binary masks are generated using this threshold, with glare regions represented as 1 and non-glare regions as 0, allowing for automated identification of specular reflection using convolutional neural networks such as the fully convolutional network and the U-Net Model. The proposed approach achieved an accuracy of 89.26% in identifying specular reflection using the threshold method alone. However, the combination of novel binary masking along with U-Net improved the accuracy to 99.71%. This study demonstrates the potential for the proposed method to improve the accuracy of identifying specular reflection in smart colposcopy images, which could ultimately enhance screening for cervical cancer in resource-limited settings.
Keywords
Cervical cancer, Specular reflection, Smart colposcopy image, Convolution Neural Network, RGB color space.
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