Computationally-efficient vision transformer for medical image semantic segmentation via dual pseudo-label supervision
Ubiquitous accumulation of large volumes of data, and in- creased availability of annotated medical data in particular, has made it possible to show the many and varied benefits of deep learning to the semantic segmentation of medical im- ages. Nevertheless, data access and annotation come at a high...
Main Authors: | Wang, Z, Dong, N, Voiculescu, ID |
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Format: | Conference item |
Language: | English |
Published: |
IEEE
2022
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