Advancing Medical Image Segmentation via Self-supervised Instance-adaptive Prototype Learning
By: Guoyan Liang , Qin Zhou , Jingyuan Chen and more
Potential Business Impact:
Helps doctors see inside bodies better.
Medical Image Segmentation (MIS) plays a crucial role in medical therapy planning and robot navigation. Prototype learning methods in MIS focus on generating segmentation masks through pixel-to-prototype comparison. However, current approaches often overlook sample diversity by using a fixed prototype per semantic class and neglect intra-class variation within each input. In this paper, we propose to generate instance-adaptive prototypes for MIS, which integrates a common prototype proposal (CPP) capturing common visual patterns and an instance-specific prototype proposal (IPP) tailored to each input. To further account for the intra-class variation, we propose to guide the IPP generation by re-weighting the intermediate feature map according to their confidence scores. These confidence scores are hierarchically generated using a transformer decoder. Additionally we introduce a novel self-supervised filtering strategy to prioritize the foreground pixels during the training of the transformer decoder. Extensive experiments demonstrate favorable performance of our method.
Similar Papers
Unsupervised Instance Segmentation with Superpixels
CV and Pattern Recognition
Teaches computers to see objects without help.
Multi-Prototype Embedding Refinement for Semi-Supervised Medical Image Segmentation
Image and Video Processing
Helps doctors see tiny details in medical scans.
Concentrate on Weakness: Mining Hard Prototypes for Few-Shot Medical Image Segmentation
CV and Pattern Recognition
Helps doctors find sickness in scans with fewer pictures.