Retinal image quality assessment using transfer learning: Spatial images vs. wavelet detail subbands
Retinal image quality assessment (RIQA) is essential to assure that images used for medical analysis are of sufficient quality for reliable diagnosis. A modified VGG16 network with transfer learning is introduced in order to classify retinal images into good or bad quality images. Both spatial and w...
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2021-09-01
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Online Access: | http://www.sciencedirect.com/science/article/pii/S2090447921001015 |
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doaj-2939bb0e0927449f8efc5dccdc6cd5ac2021-09-17T04:35:31ZengElsevierAin Shams Engineering Journal2090-44792021-09-0112327992807Retinal image quality assessment using transfer learning: Spatial images vs. wavelet detail subbandsLamiaa Abdel-Hamid0Department of Electronics and Communication, Faculty of Engineering, Misr International University, Km28 Ismalia Road, Cairo, EgyptRetinal image quality assessment (RIQA) is essential to assure that images used for medical analysis are of sufficient quality for reliable diagnosis. A modified VGG16 network with transfer learning is introduced in order to classify retinal images into good or bad quality images. Both spatial and wavelet detail subbands are compared as inputs to the modified VGG16 network. Three public retinal image datasets captured with different imaging devices are used, both individually and collectively. Superior performance was attained by the modified VGG16 network, where accuracies in the range of 99–100% were achieved regardless of whether retinal images from the same or different sources were considered and whether the spatial or wavelet images were used. The implemented RIQA algorithm was also found to outperform other RIQA deep learning algorithms from literature by 1.5–10% and to achieve accuracies that are up to 32% higher than traditional RIQA methods for the same dataset.http://www.sciencedirect.com/science/article/pii/S2090447921001015Retinal image quality assessment (RIQA)Wavelet transformTransfer learningVGG networkDeep learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lamiaa Abdel-Hamid |
spellingShingle |
Lamiaa Abdel-Hamid Retinal image quality assessment using transfer learning: Spatial images vs. wavelet detail subbands Ain Shams Engineering Journal Retinal image quality assessment (RIQA) Wavelet transform Transfer learning VGG network Deep learning |
author_facet |
Lamiaa Abdel-Hamid |
author_sort |
Lamiaa Abdel-Hamid |
title |
Retinal image quality assessment using transfer learning: Spatial images vs. wavelet detail subbands |
title_short |
Retinal image quality assessment using transfer learning: Spatial images vs. wavelet detail subbands |
title_full |
Retinal image quality assessment using transfer learning: Spatial images vs. wavelet detail subbands |
title_fullStr |
Retinal image quality assessment using transfer learning: Spatial images vs. wavelet detail subbands |
title_full_unstemmed |
Retinal image quality assessment using transfer learning: Spatial images vs. wavelet detail subbands |
title_sort |
retinal image quality assessment using transfer learning: spatial images vs. wavelet detail subbands |
publisher |
Elsevier |
series |
Ain Shams Engineering Journal |
issn |
2090-4479 |
publishDate |
2021-09-01 |
description |
Retinal image quality assessment (RIQA) is essential to assure that images used for medical analysis are of sufficient quality for reliable diagnosis. A modified VGG16 network with transfer learning is introduced in order to classify retinal images into good or bad quality images. Both spatial and wavelet detail subbands are compared as inputs to the modified VGG16 network. Three public retinal image datasets captured with different imaging devices are used, both individually and collectively. Superior performance was attained by the modified VGG16 network, where accuracies in the range of 99–100% were achieved regardless of whether retinal images from the same or different sources were considered and whether the spatial or wavelet images were used. The implemented RIQA algorithm was also found to outperform other RIQA deep learning algorithms from literature by 1.5–10% and to achieve accuracies that are up to 32% higher than traditional RIQA methods for the same dataset. |
topic |
Retinal image quality assessment (RIQA) Wavelet transform Transfer learning VGG network Deep learning |
url |
http://www.sciencedirect.com/science/article/pii/S2090447921001015 |
work_keys_str_mv |
AT lamiaaabdelhamid retinalimagequalityassessmentusingtransferlearningspatialimagesvswaveletdetailsubbands |
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1717377710264680448 |