Ontology-based n-ball Concept Embeddings Informing Few-shot Image Classification
Jayathilaka, Mirantha, Mu, Tingting, Sattler, Uli
–arXiv.org Artificial Intelligence
We propose a novel framework named ViOCE that integrates ontology-based background knowledge in the form of $n$-ball concept embeddings into a neural network based vision architecture. The approach consists of two components - converting symbolic knowledge of an ontology into continuous space by learning n-ball embeddings that capture properties of subsumption and disjointness, and guiding the training and inference of a vision model using the learnt embeddings. We evaluate ViOCE using the task of few-shot image classification, where it demonstrates superior performance on two standard benchmarks.
arXiv.org Artificial Intelligence
Sep-19-2021