Fully Few-shot Class-incremental Audio Classification Using Multi-level Embedding Extractor and Ridge Regression Classifier
  • Si, Yongjie
  • Li, Yanxiong
  • Tan, Jiaxin
  • He, Qianhua
  • Kwak, Il-Youp
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초록

In the task of Few-shot Class-incremental Audio Classification (FCAC), training samples of each base class are required to be abundant to train model. However, it is not easy to collect abundant training samples for many base classes due to data scarcity and high collection cost. We discuss a more realistic issue, Fully FCAC (FFCAC), in which training samples of both base and incremental classes are only a few. Furthermore, we propose a FFCAC method using a model which is decoupled into a multi-level embedding extractor and a ridge regression classifier. The embedding extractor consists of an encoder of audio spectrogram Transformer and a fusion module, and is trained in the base session but frozen in all incremental sessions. The classifier is updated continually in each incremental session. Results on three public datasets show that our method exceeds current methods in accuracy, and has advantage over most of them in complexity. The code is at https://github.com/YongjieSi/MAR.

키워드

audio classificationaudio spectrum TransformerFew-shot class-incremental learningmulti-level embedding extractorridge regression classifier
제목
Fully Few-shot Class-incremental Audio Classification Using Multi-level Embedding Extractor and Ridge Regression Classifier
저자
Si, YongjieLi, YanxiongTan, JiaxinHe, QianhuaKwak, Il-Youp
DOI
10.21437/Interspeech.2025-1085
발행일
2025-08
유형
Proceedings Paper
저널명
Proceedings of the Annual Conference of the International Speech Communication Association, INTERSPEECH
페이지
1318 ~ 1322