Alapfogalmak
BLO-SAM introduces bi-level optimization to address overfitting in semantic segmentation tasks, enhancing model generalization and performance.
Statisztikák
SAM은 세분화 모델로 사용됨.
BLO-SAM은 모델 매개변수와 프롬프트 임베딩을 다른 데이터 하위 집합에서 별도로 최적화함.
Idézetek
"BLO-SAM significantly reduces the risk of overfitting by training model parameters and prompt embedding on separate subsets of the training data."
"Results demonstrate BLO-SAM's superior performance over various state-of-the-art image semantic segmentation methods."