핵심 개념
The author proposes TSRNet, a framework for real-time ECG anomaly detection that leverages anomaly detection to identify unhealthy conditions using normal ECG data for training. By considering both time series and spectrogram aspects, TSRNet effectively captures comprehensive characteristics of the ECG signal.
초록
TSRNet is introduced as a specialized network for detecting anomalies in ECG signals by combining time series and spectrogram domains. The approach focuses on leveraging normal ECG data for training to detect abnormal patterns effectively. A novel inference method called Peak-based Error is introduced to prioritize ECG peaks in detecting abnormalities. Experimental results on the PTB-XL dataset demonstrate the effectiveness of TSRNet in ECG anomaly detection while maintaining efficiency with fewer trainable parameters.
통계
TSRNet achieves an AUC of 0.860.
The model size is 4.39M parameters.
Inference speed is 33.3 fps.
인용구
"Our contributions include investigating the potential benefits of spectrograms in ECG anomaly detection."
"TSRNet outperforms other SOTA methods while keeping its model size compact."