This Looks Distinctly Like That: Grounding Interpretable Recognition in Stiefel Geometry against Neural Collapse
This paper introduces Adaptive Manifold Prototypes (AMP), a framework that leverages Stiefel manifold optimization to represent class prototypes as orthonormal bases, thereby preventing prototype collapse caused by Neural Collapse while achieving state-of-the-art accuracy and improved causal faithfulness in fine-grained recognition.