Difference between revisions of "ACRROSS"
Jump to navigation
Jump to search
Line 1: | Line 1: | ||
<!-- <meta name="title" content="ACRROSS: Artifacts and Contrast Robust Representation for OCTA Semi-supervised Segmentation"/> --> | <!-- <meta name="title" content="ACRROSS: Artifacts and Contrast Robust Representation for OCTA Semi-supervised Segmentation"/> --> | ||
− | {{h2|ACRROSS}} | + | {{h2|ACRROSS: Artifacts and Contrast Robust Representation for OCTA Semi-supervised Segmentation}} |
{{TOCright}} | {{TOCright}} |
Revision as of 21:29, 27 November 2022
ACRROSS: Artifacts and Contrast Robust Representation for OCTA Semi-supervised Segmentation
Artifacts and Contrast Robust Representation for OCTA Semi-supervised Segmentation (ACRROSS) is a vessel segmentation algorithm for 2D en face OCTA images. It can handle scans captured from multiple devices. The associated publication is:
- Yihao Liu, Aaron Carass, Lianrui Zuo, Yufan He, Shuo Han, Lorenzo Gregori, Sean Murray, Rohit Mishra, Jianqin Lei, Peter A. Calabresi, Shiv Saidha, Jerry L. Prince, "Disentangled Representation Learning for OCTA Vessel Segmentation with Limited Training Data", .
If you have questions regarding the method or software, please contact Yihao Liu