Abstracted Gaussian Prototypes for True One-Shot Concept Learning
This paper introduces the Abstracted Gaussian Prototypes (AGP) framework, a low-complexity, standalone system that achieves "true" one-shot learning by encoding visual concepts as Gaussian mixture models to simultaneously perform robust classification and generate human-indistinguishable novel class variants without relying on pre-training.