March 26, 2024, 4:48 a.m. | Yuhang Ding, Liulei Li, Wenguan Wang, Yi Yang

cs.CV updates on arXiv.org arxiv.org

arXiv:2403.16646v1 Announce Type: new
Abstract: Prominent solutions for medical image segmentation are typically tailored for automatic or interactive setups, posing challenges in facilitating progress achieved in one task to another.$_{\!}$ This$_{\!}$ also$_{\!}$ necessitates$_{\!}$ separate$_{\!}$ models for each task, duplicating both training time and parameters.$_{\!}$ To$_{\!}$ address$_{\!}$ above$_{\!}$ issues,$_{\!}$ we$_{\!}$ introduce$_{\!}$ S2VNet,$_{\!}$ a$_{\!}$ universal$_{\!}$ framework$_{\!}$ that$_{\!}$ leverages$_{\!}$ Slice-to-Volume$_{\!}$ propagation$_{\!}$ to$_{\!}$ unify automatic/interactive segmentation within a single model and one training session. Inspired by clustering-based segmentation techniques, S2VNet makes full use of …

abstract arxiv challenges clustering cs.cv image interactive medical parameters progress propagation segmentation solutions training type universal

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