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Continual Few-Shot Learning with Adversarial Class Storage

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arxiv 2207.12303 v1 pith:WN2SLITO submitted 2022-07-10 cs.LG cs.AIcs.CV

Continual Few-Shot Learning with Adversarial Class Storage

classification cs.LG cs.AIcs.CV
keywords learningcontinualfew-shotforgettingtasksadversarialcatastrophicclassification
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Humans have a remarkable ability to quickly and effectively learn new concepts in a continuous manner without forgetting old knowledge. Though deep learning has made tremendous successes on various computer vision tasks, it faces challenges for achieving such human-level intelligence. In this paper, we define a new problem called continual few-shot learning, in which tasks arrive sequentially and each task is associated with a few training samples. We propose Continual Meta-Learner (CML) to solve this problem. CML integrates metric-based classification and a memory-based mechanism along with adversarial learning into a meta-learning framework, which leads to the desirable properties: 1) it can quickly and effectively learn to handle a new task; 2) it overcomes catastrophic forgetting; 3) it is model-agnostic. We conduct extensive experiments on two image datasets, MiniImageNet and CIFAR100. Experimental results show that CML delivers state-of-the-art performance in terms of classification accuracy on few-shot learning tasks without catastrophic forgetting.

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