Continual Learning in the Frequency Domain
Continual learning (CL) is designed to learn new tasks while preserving existing knowledge. Replaying samples from earlier tasks has proven to be an effective method to mitigate the forgetting of previously acquired knowledge. However, the current research on the training efficiency of rehearsal-bas...
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Zusammenfassung: | Continual learning (CL) is designed to learn new tasks while preserving
existing knowledge. Replaying samples from earlier tasks has proven to be an
effective method to mitigate the forgetting of previously acquired knowledge.
However, the current research on the training efficiency of rehearsal-based
methods is insufficient, which limits the practical application of CL systems
in resource-limited scenarios. The human visual system (HVS) exhibits varying
sensitivities to different frequency components, enabling the efficient
elimination of visually redundant information. Inspired by HVS, we propose a
novel framework called Continual Learning in the Frequency Domain (CLFD). To
our knowledge, this is the first study to utilize frequency domain features to
enhance the performance and efficiency of CL training on edge devices. For the
input features of the feature extractor, CLFD employs wavelet transform to map
the original input image into the frequency domain, thereby effectively
reducing the size of input feature maps. Regarding the output features of the
feature extractor, CLFD selectively utilizes output features for distinct
classes for classification, thereby balancing the reusability and interference
of output features based on the frequency domain similarity of the classes
across various tasks. Optimizing only the input and output features of the
feature extractor allows for seamless integration of CLFD with various
rehearsal-based methods. Extensive experiments conducted in both cloud and edge
environments demonstrate that CLFD consistently improves the performance of
state-of-the-art (SOTA) methods in both precision and training efficiency.
Specifically, CLFD can increase the accuracy of the SOTA CL method by up to
6.83% and reduce the training time by 2.6$\times$. |
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DOI: | 10.48550/arxiv.2410.06645 |