Prompt Group-Aware Training for Robust Text-Guided Nuclei Segmentation
This paper introduces a prompt group-aware training framework that enhances the robustness and generalization of text-guided nuclei segmentation by enforcing consistency among semantically related prompts through quality-guided regularization and logit-level constraints, achieving significant performance gains without altering model architecture or inference.