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TRLS: A Time Series Representation Learning Framework via Spectrogram for Medical Signal Processing

Signal Processing 2024-01-12 v1 Artificial Intelligence Machine Learning

Abstract

Representation learning frameworks in unlabeled time series have been proposed for medical signal processing. Despite the numerous excellent progresses have been made in previous works, we observe the representation extracted for the time series still does not generalize well. In this paper, we present a Time series (medical signal) Representation Learning framework via Spectrogram (TRLS) to get more informative representations. We transform the input time-domain medical signals into spectrograms and design a time-frequency encoder named Time Frequency RNN (TFRNN) to capture more robust multi-scale representations from the augmented spectrograms. Our TRLS takes spectrogram as input with two types of different data augmentations and maximizes the similarity between positive ones, which effectively circumvents the problem of designing negative samples. Our evaluation of four real-world medical signal datasets focusing on medical signal classification shows that TRLS is superior to the existing frameworks.

Keywords

Cite

@article{arxiv.2401.05431,
  title  = {TRLS: A Time Series Representation Learning Framework via Spectrogram for Medical Signal Processing},
  author = {Luyuan Xie and Cong Li and Xin Zhang and Shengfang Zhai and Yuejian Fang and Qingni Shen and Zhonghai Wu},
  journal= {arXiv preprint arXiv:2401.05431},
  year   = {2024}
}

Comments

This paper is accept by ICASSP 2024. This is a more detailed version

R2 v1 2026-06-28T14:13:35.840Z