Self-distilled Knowledge Delegator for Exemplar-free Class Incremental
Learning
- URL: http://arxiv.org/abs/2205.11071v1
- Date: Mon, 23 May 2022 06:31:13 GMT
- Title: Self-distilled Knowledge Delegator for Exemplar-free Class Incremental
Learning
- Authors: Fanfan Ye, Liang Ma, Qiaoyong Zhong, Di Xie, Shiliang Pu
- Abstract summary: We exploit the knowledge encoded in a previously trained classification model to handle the catastrophic forgetting problem in continual learning.
Specifically, we introduce a so-called knowledge delegator, which is capable of transferring knowledge from the trained model to a randomly re-d new model by generating informative samples.
This simple incremental learning framework surpasses existing exemplar-free methods by a large margin on four widely used class incremental benchmarks.
- Score: 39.69318045176051
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Exemplar-free incremental learning is extremely challenging due to
inaccessibility of data from old tasks. In this paper, we attempt to exploit
the knowledge encoded in a previously trained classification model to handle
the catastrophic forgetting problem in continual learning. Specifically, we
introduce a so-called knowledge delegator, which is capable of transferring
knowledge from the trained model to a randomly re-initialized new model by
generating informative samples. Given the previous model only, the delegator is
effectively learned using a self-distillation mechanism in a data-free manner.
The knowledge extracted by the delegator is then utilized to maintain the
performance of the model on old tasks in incremental learning. This simple
incremental learning framework surpasses existing exemplar-free methods by a
large margin on four widely used class incremental benchmarks, namely
CIFAR-100, ImageNet-Subset, Caltech-101 and Flowers-102. Notably, we achieve
comparable performance to some exemplar-based methods without accessing any
exemplars.
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