TY - JOUR
T1 - Self-adjustable domain adaptation in personalized ECG monitoring integrated with IR-UWB radar
AU - Yin, Wenfeng
AU - Yang, Xiuzhu
AU - Li, Lei
AU - Zhang, Lin
AU - Kitsuwan, Nattapong
AU - Shinkuma, Ryoichi
AU - Oki, Eiji
N1 - Publisher Copyright:
© 2018 The Authors
PY - 2019/1
Y1 - 2019/1
N2 - To enhance electrocardiogram (ECG) monitoring systems in personalized detections, deep neural networks (DNNs) are applied to overcome individual differences by periodical retraining. As introduced previously [4], DNNs relieve individual differences by fusing ECG with impulse radio ultra-wide band (IR-UWB) radar. However, such DNN-based ECG monitoring system tends to overfit into personal small datasets and is difficult to generalize to newly collected unlabeled data. This paper proposes a self-adjustable domain adaptation (SADA) strategy to prevent from overfitting and exploit unlabeled data. Firstly, this paper enlarges the database of ECG and radar data with actual records acquired from 28 testers and expanded by the data augmentation. Secondly, to utilize unlabeled data, SADA combines self organizing maps with the transfer learning in predicting labels. Thirdly, SADA integrates the one-class classification with domain adaptation algorithms to reduce overfitting. Based on our enlarged database and standard databases, a large dataset of 73200 records and a small one of 1849 records are built up to verify our proposal. Results show SADA's effectiveness in predicting labels and increments in the sensitivity of DNNs by 14.4% compared with existing domain adaptation algorithms.
AB - To enhance electrocardiogram (ECG) monitoring systems in personalized detections, deep neural networks (DNNs) are applied to overcome individual differences by periodical retraining. As introduced previously [4], DNNs relieve individual differences by fusing ECG with impulse radio ultra-wide band (IR-UWB) radar. However, such DNN-based ECG monitoring system tends to overfit into personal small datasets and is difficult to generalize to newly collected unlabeled data. This paper proposes a self-adjustable domain adaptation (SADA) strategy to prevent from overfitting and exploit unlabeled data. Firstly, this paper enlarges the database of ECG and radar data with actual records acquired from 28 testers and expanded by the data augmentation. Secondly, to utilize unlabeled data, SADA combines self organizing maps with the transfer learning in predicting labels. Thirdly, SADA integrates the one-class classification with domain adaptation algorithms to reduce overfitting. Based on our enlarged database and standard databases, a large dataset of 73200 records and a small one of 1849 records are built up to verify our proposal. Results show SADA's effectiveness in predicting labels and increments in the sensitivity of DNNs by 14.4% compared with existing domain adaptation algorithms.
KW - Domain adaptation
KW - ECG monitoring
KW - One-class classification
KW - Self organizing maps
KW - Transfer learning
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U2 - 10.1016/j.bspc.2018.08.002
DO - 10.1016/j.bspc.2018.08.002
M3 - Article
AN - SCOPUS:85051827963
SN - 1746-8094
VL - 47
SP - 75
EP - 87
JO - Biomedical Signal Processing and Control
JF - Biomedical Signal Processing and Control
ER -