Grunnleggende konsepter
의료 볼륨 분할에서 사이클 일관성 학습의 효과적인 활용
Statistikk
"Evaluation results on challenging AbdomenCT-1K and OAI-ZIB datasets demonstrate the effectiveness of our method."
"Evaluation results on the AbdomenCT-1K dataset show that cycle consistency training improved segmentation on 8 out of 12 organs."
"We set λ = 0.1 in the cycle consistency loss based on parameter tuning on video datasets."
Sitater
"We explored cycle consistency learning for interactive volume segmentation, aiming to address the pervasive error accumulation issue plaguing propagation modules."
"By introducing a segmentation backward path and integrating a cycle consistency loss, we seamlessly wove these advancements into current methodologies for medical volume segmentation."