Balasubramanian et al., 2022 - Google Patents
Improved swarm optimization of deep features for glaucoma classification using SEGSO and VGGNetBalasubramanian et al., 2022
- Document ID
- 14269711751074171003
- Author
- Balasubramanian K
- Ramya K
- Devi K
- Publication year
- Publication venue
- Biomedical Signal Processing and Control
External Links
Snippet
Efficient classification of glaucoma from fundus images remains crucial and a challenging task as the retinal anatomical structure is so complex in nature with varying contrast and boundaries. As a result, there is a chance that expert systems will misclassify the data. As a …
- 208000010412 Glaucoma 0 title abstract description 59
Classifications
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