Continual Learning in the Frequency Domain
Ruiqi Liu, Boyu Diao, Libo Huang, Zijia An, Zhulin An, Yongjun Xu

TL;DR
This paper introduces CLFD, a novel continual learning framework that leverages frequency domain features via wavelet transform to improve training efficiency and accuracy, especially on edge devices.
Contribution
CLFD is the first approach to use frequency domain features for continual learning, enhancing performance and efficiency on resource-limited edge devices.
Findings
Increases SOTA accuracy by up to 6.83%.
Reduces training time by 2.6 times.
Effective in both cloud and edge environments.
Abstract
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…
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Taxonomy
TopicsSeismology and Earthquake Studies
