Data di Pubblicazione:
2023
Abstract:
In this paper, we explore the usage of hierarchical priors to improve learning in contexts where the number of available examples is extremely low. Specifically, we consider a Prototype Learning setting where deep neural networks are used to embed data in hyperspherical geometries. In this scenario, we propose an innovative way to learn the prototypes by combining class separation and hierarchical information. In addition, we introduce a contrastive loss function capable of balancing the exploitation of prototypes through a prototype pruning mechanism. We compare the proposed method with state-of-the-art approaches on two public datasets.
Tipologia CRIS:
04A-Conference paper in volume
Keywords:
Prototype Learning, Image Classification, Few data, Hyperspherical networks
Elenco autori:
Samuele Fonio, Lorenzo Paletto, Mattia Cerrato, Dino Ienco, Roberto Esposito
Link alla scheda completa:
Link al Full Text:
Titolo del libro:
ESANN 2023 - Proceedings