2010 the 2nd International Conference on Computer and Automation Engineering (ICCAE) 2010
DOI: 10.1109/iccae.2010.5452002
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A novel abnormal ECG beats detection method

Abstract: Automatic detection of life threatening abnormal beats in electrocardiogram (ECG) signal is of importance in many healthcare applications. The ECG beat signal variations in both shape and time impose great challenges to automatic detection tasks. To address those challenges and for high accuracy automatic detection, we present here a two stage abnormal beats detection algorithm. Normal and abnormal beat types are represented by templates which are selected from training data using clustering. Multiple template… Show more

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Cited by 9 publications
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“…The ECG beat signal variations in both shape and time imposes great challenges to automatic detection tasks. To address those challenges and accurate automatic detection, the research study Li (2010) proposed a new ECG beat classifier based on both time and transform domain characters. The result shows that this method overcomes the locality of classification performance and achieves high detection ratio on large dataset, which goes a big step further towards the commercial application.…”
Section: Detection and Classification: Ecg Detection And Classificatimentioning
confidence: 99%
“…The ECG beat signal variations in both shape and time imposes great challenges to automatic detection tasks. To address those challenges and accurate automatic detection, the research study Li (2010) proposed a new ECG beat classifier based on both time and transform domain characters. The result shows that this method overcomes the locality of classification performance and achieves high detection ratio on large dataset, which goes a big step further towards the commercial application.…”
Section: Detection and Classification: Ecg Detection And Classificatimentioning
confidence: 99%