Litcius/Paper detail

Match them up: visually explainable few-shot image classification

Bowen Wang, Liangzhi Li, Manisha Verma, Yuta Nakashima, Ryo Kawasaki, Hajime Nagahara

2022Applied Intelligence32 citationsDOIOpen Access PDF

Abstract

Abstract Few-shot learning (FSL) approaches, mostly neural network-based, assume that pre-trained knowledge can be obtained from base (seen) classes and transferred to novel (unseen) classes. However, the black-box nature of neural networks makes it difficult to understand what is actually transferred, which may hamper FSL application in some risk-sensitive areas. In this paper, we reveal a new way to perform FSL for image classification, using a visual representation from the backbone model and patterns generated by a self-attention based explainable module. The representation weighted by patterns only includes a minimum number of distinguishable features and the visualized patterns can serve as an informative hint on the transferred knowledge. On three mainstream datasets, experimental results prove that the proposed method can enable satisfying explainability and achieve high classification results. Code is available at https://github.com/wbw520/MTUNet .

Topics & Concepts

Computer scienceArtificial intelligenceRepresentation (politics)Code (set theory)Shot (pellet)Image (mathematics)Pattern recognition (psychology)Contextual image classificationArtificial neural networkBlack boxMachine learningOne shotLawSet (abstract data type)Programming languageEngineeringOrganic chemistryMechanical engineeringPoliticsChemistryPolitical scienceDomain Adaptation and Few-Shot LearningExplainable Artificial Intelligence (XAI)Advanced Neural Network Applications