TY - JOUR
T1 - Attention correction feature and boundary constraint knowledge distillation for efficient 3D medical image segmentation
AU - Yu, Xiangchun
AU - Teng, Longxiang
AU - Zhang, Dingwen
AU - Zheng, Jian
AU - Chen, Hechang
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2025/3/1
Y1 - 2025/3/1
N2 - Incorporating auxiliary modules into the teacher to facilitate feature knowledge transfer often incurs additional training costs, significantly impeding the application of feature-based knowledge distillation in 3D medical image segmentation. This paper explores the non-negative matrix factorization (NMF) theory to illustrate that ResNet-like or UNet-like residual connections and attention mechanisms function as corrections to input features. Based on this discovery, we propose Attention Correction Feature Distillation (ACFD), which comprises Correction Factor Distillation (CFD) and Attention-based Feature Distillation (AFD). In CFD, the teacher's residual correction factor guides the student's learning of the attention correction factor, while in AFD, the teacher's residual-corrected features are used to teach the student's attention-corrected features. Furthermore, the introduction of boundary constraints can enhance the student's boundary perception, but Hard Boundary Distillation (Hard BD) is sensitive to noise. Hence, we introduce Soft Boundary Distillation (Soft BD) to extract soft boundary information by estimating the Hausdorff Distance (HD) and integrate both Hard BD and Soft BD into Boundary Constraint Distillation (BCD). Ultimately, we present the Attention Correction Feature and Boundary Constraint Knowledge Distillation (ACF-BCKD). Comprehensive experiments on three benchmark datasets — BTCV, WORD, and BraTS-23 — demonstrate the state-of-the-art performance of ACF-BCKD. Ablation experiments and visualization results confirm the effectiveness of individual modules.
AB - Incorporating auxiliary modules into the teacher to facilitate feature knowledge transfer often incurs additional training costs, significantly impeding the application of feature-based knowledge distillation in 3D medical image segmentation. This paper explores the non-negative matrix factorization (NMF) theory to illustrate that ResNet-like or UNet-like residual connections and attention mechanisms function as corrections to input features. Based on this discovery, we propose Attention Correction Feature Distillation (ACFD), which comprises Correction Factor Distillation (CFD) and Attention-based Feature Distillation (AFD). In CFD, the teacher's residual correction factor guides the student's learning of the attention correction factor, while in AFD, the teacher's residual-corrected features are used to teach the student's attention-corrected features. Furthermore, the introduction of boundary constraints can enhance the student's boundary perception, but Hard Boundary Distillation (Hard BD) is sensitive to noise. Hence, we introduce Soft Boundary Distillation (Soft BD) to extract soft boundary information by estimating the Hausdorff Distance (HD) and integrate both Hard BD and Soft BD into Boundary Constraint Distillation (BCD). Ultimately, we present the Attention Correction Feature and Boundary Constraint Knowledge Distillation (ACF-BCKD). Comprehensive experiments on three benchmark datasets — BTCV, WORD, and BraTS-23 — demonstrate the state-of-the-art performance of ACF-BCKD. Ablation experiments and visualization results confirm the effectiveness of individual modules.
KW - 3D medical image segmentation
KW - Boundary constraint distillation
KW - Correction factor
KW - Feature-based knowledge distillation
KW - Non-negative matrix factorization
UR - https://www.scopus.com/pages/publications/85208468832
U2 - 10.1016/j.eswa.2024.125670
DO - 10.1016/j.eswa.2024.125670
M3 - 文章
AN - SCOPUS:85208468832
SN - 0957-4174
VL - 262
JO - Expert Systems with Applications
JF - Expert Systems with Applications
M1 - 125670
ER -