Litcius/Paper detail

Memorizing Complementation Network for Few-Shot Class-Incremental Learning

Zhong Ji, Zhishen Hou, Xiyao Liu, Yanwei Pang, Xuelong Li

2023IEEE Transactions on Image Processing63 citationsDOI

Abstract

Few-shot Class-Incremental Learning (FSCIL) aims at learning new concepts continually with only a few samples, which is prone to suffer the catastrophic forgetting and overfitting problems. The inaccessibility of old classes and the scarcity of the novel samples make it formidable to realize the trade-off between retaining old knowledge and learning novel concepts. Inspired by that different models memorize different knowledge when learning novel concepts, we propose a Memorizing Complementation Network (MCNet) to ensemble multiple models that complements the different memorized knowledge with each other in novel tasks. Additionally, to update the model with few novel samples, we develop a Prototype Smoothing Hard-mining Triplet (PSHT) loss to push the novel samples away from not only each other in current task but also the old distribution. Extensive experiments on three benchmark datasets, e.g., CIFAR100, miniImageNet and CUB200, have demonstrated the superiority of our proposed method.

Topics & Concepts

Computer scienceOverfittingArtificial intelligenceMemorizationMachine learningClass (philosophy)Benchmark (surveying)Task (project management)ForgettingArtificial neural networkMathematicsGeographyEconomicsMathematics educationGeodesyPhilosophyLinguisticsManagementDomain Adaptation and Few-Shot LearningMultimodal Machine Learning ApplicationsText and Document Classification Technologies
Memorizing Complementation Network for Few-Shot Class-Incremental Learning | Litcius