Concentrate on Weakness: Mining Hard Prototypes for Few-Shot Medical Image Segmentation
Journal:
arXiv
Published Date:
May 28, 2025
Abstract
Few-Shot Medical Image Segmentation (FSMIS) has been widely used to train a
model that can perform segmentation from only a few annotated images. However,
most existing prototype-based FSMIS methods generate multiple prototypes from
the support image solely by random sampling or local averaging, which can cause
particularly severe boundary blurring due to the tendency for normal features
accounting for the majority of features of a specific category. Consequently,
we propose to focus more attention to those weaker features that are crucial
for clear segmentation boundary. Specifically, we design a Support
Self-Prediction (SSP) module to identify such weak features by comparing true
support mask with one predicted by global support prototype. Then, a Hard
Prototypes Generation (HPG) module is employed to generate multiple hard
prototypes based on these weak features. Subsequently, a Multiple Similarity
Maps Fusion (MSMF) module is devised to generate final segmenting mask in a
dual-path fashion to mitigate the imbalance between foreground and background
in medical images. Furthermore, we introduce a boundary loss to further
constraint the edge of segmentation. Extensive experiments on three publicly
available medical image datasets demonstrate that our method achieves
state-of-the-art performance. Code is available at
https://github.com/jcjiang99/CoW.