2021
DOI: 10.1109/access.2021.3133482
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Multi-Feature Sparse Representations Learning via Collective Matrix Factorization for ECG Biometric Recognition

Abstract: Electrocardiogram (ECG) signal is a promising biometric trait, and many methods have been proposed for ECG biometric recognition. However, it is challenging to design a robust and precise method to improve the recognition performance of ECG signals with noise and signal variation. We present a multi-feature sparse representations learning model via collective matrix factorization for ECG biometric recognition, MSRCMF for short. First, we extract one-dimensional local binary pattern (1D-LBP), shape and wavelet… Show more

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Cited by 2 publications
(2 citation statements)
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“…In the medical domain, such kind of multi-modal pretraining has been exploited for better understanding of imaging data, such as chest X-rays and magnetic resonance images, to benefit the downstream disease classification and medical image segmentation tasks [29][30][31][32][33]. Apart from image data, most recently, concurrent works have been made on exploring the connection between natural language and signals (ECG, EEG) for better disease classification [34][35][36]. To the best of our knowledge, there is no existing risk prediction work that explores the benefit of combining ECG reports with ECG waves for better representation learning.…”
Section: B Large Language Model For Healthcarementioning
confidence: 99%
See 1 more Smart Citation
“…In the medical domain, such kind of multi-modal pretraining has been exploited for better understanding of imaging data, such as chest X-rays and magnetic resonance images, to benefit the downstream disease classification and medical image segmentation tasks [29][30][31][32][33]. Apart from image data, most recently, concurrent works have been made on exploring the connection between natural language and signals (ECG, EEG) for better disease classification [34][35][36]. To the best of our knowledge, there is no existing risk prediction work that explores the benefit of combining ECG reports with ECG waves for better representation learning.…”
Section: B Large Language Model For Healthcarementioning
confidence: 99%
“…• Latent text code from raw ECG report (raw): For a piece of ECG report y (in English) 3 , we simply feed it to the LLM to get z text = LLM(y), following [32,35].…”
Section: Trainingmentioning
confidence: 99%