Journal ArticleUnknown
Synthesized Feature based Few-Shot Class-Incremental Learning on a Mixture of Subspaces
Authors
Author Affiliations
Australian National University, Data61, North South University, Monash University
Published In2021 IEEE/CVF International Conference on Computer Vision (ICCV)
Year2021
Citations64
Abstract
Few-shot class incremental learning (FSCIL) aims to incrementally add sets of novel classes to a well-trained base model in multiple training sessions with the restriction that only a few novel instances are available per class. While learning novel classes, FSCIL methods gradually forget base (old) class training and overfit to a few novel class samples. Existing approaches have addressed this problem by computing the class prototypes from the visual or semantic word vector domain. In this paper, we propose addressing this problem using a mixture of subspaces. Subspaces define the cluster structure of the visual domain and help to describe the visual and semantic domain considering the overall distribution of the data. Additionally, we propose to employ a variational autoencoder…
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