Litcius/Paper detail

Tailoring Embedding Function to Heterogeneous Few-Shot Tasks by Global and Local Feature Adaptors

Lü Su, Han-Jia Ye, De‐Chuan Zhan

2021Proceedings of the AAAI Conference on Artificial Intelligence28 citationsDOIOpen Access PDF

Abstract

Few-Shot Learning (FSL) is essential for visual recognition. Many methods tackle this challenging problem via learning an embedding function from seen classes and transfer it to unseen classes with a few labeled instances. Researchers recently found it beneficial to incorporate task-specific feature adaptation into FSL models, which produces the most representative features for each task. However, these methods ignore the diversity of classes and apply a global transformation to the task. In this paper, we propose Global and Local Feature Adaptor (GLoFA), a unifying framework that tailors the instance representation to specific tasks by global and local feature adaptors. We claim that class-specific local transformation helps to improve the representation ability of feature adaptor. Global masks tend to capture sketchy patterns, while local masks focus on detailed characteristics. A strategy to measure the relationship between instances adaptively based on the characteristics of both tasks and classes endow GLoFA with the ability to handle mix-grained tasks. GLoFA outperforms other methods on a heterogeneous task distribution and achieves competitive results on benchmark datasets.

Topics & Concepts

Feature (linguistics)Computer scienceEmbeddingBenchmark (surveying)Artificial intelligenceTask (project management)Feature learningRepresentation (politics)Transformation (genetics)Class (philosophy)Adaptation (eye)Function (biology)Focus (optics)Machine learningPattern recognition (psychology)GeographyManagementPhysicsBiochemistryPhilosophyPoliticsBiologyOpticsChemistryPolitical scienceEvolutionary biologyEconomicsGeneLawLinguisticsGeodesyDomain Adaptation and Few-Shot LearningMultimodal Machine Learning Applications