CT Male Pelvic Organ Segmentation via Hybrid Loss Network With Incomplete Annotation

Volume: 39, Issue: 6, Pages: 2151 - 2162
Published: Jun 1, 2020
Abstract
Sufficient data with complete annotation is essential for training deep models to perform automatic and accurate segmentation of CT male pelvic organs, especially when such data is with great challenges such as low contrast and large shape variation. However, manual annotation is expensive in terms of both finance and human effort, which usually results in insufficient completely annotated data in real applications. To this end, we propose a...
Paper Details
Title
CT Male Pelvic Organ Segmentation via Hybrid Loss Network With Incomplete Annotation
Published Date
Jun 1, 2020
Volume
39
Issue
6
Pages
2151 - 2162
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