Abstract-This paper presents a multi-stage algorithm for multi-channel ECG beat classification into normal and abnormal categories using a sequential beat clustering and a cross-distance analysis algorithm. After clustering stage, a search algorithm is applied to detect the main normal class. Then other clusters are classified based on their distance from the main normal class. The algorithm is developed for both 1-lead and 2-lead ECG. Evaluated results on MIT-BIH database exhibit a classification error of less than 1 % for 1-lead and 0.2 % for 2-lead and clustering error of 0.2%
Introduction. The most common method for diagnosing cardiovascular diseases is the method of ECG mon...
This Paper describes a clustering approach to be used for incoming data under computional constraint...
Electrocardiogram (ECG) is an important tool for monitoring abnormal heartbeats. Machine learning ha...
This paper develops a novel framework for feature extraction based on a combination of Linear Discri...
The paper deals with application of cluster analysis to different ECG records in order to identify p...
This thesis deals with methods of cluster analysis and their applications to short-term recording of...
This paper presents an investigation into the development of an efficient scheme to detect abnormal ...
In this paper, the performance analysis of a clustering algorithm applied to group electrocardiograp...
Automatic classification of electrocardiogram (ECG) signals is of paramount importance in the detect...
A study of computerised interpretation of the electrocardiogram (ECG) with the main focus on the pre...
The abnormalities of human heart are usually diagnosed from a biological signal known as the Electro...
Automatic interpretation of electrocardiography provides a non-invasive and inexpensive technique to...
Cardiovascular diseases are one of the main causes of death around the world. Automatic classificati...
Holter electrocardiographic (ECG) signals are ambulatory long-term registers used to detect heart di...
In this study, six types of arrhythmia beats observed in ECG signals have been analysed by using clu...
Introduction. The most common method for diagnosing cardiovascular diseases is the method of ECG mon...
This Paper describes a clustering approach to be used for incoming data under computional constraint...
Electrocardiogram (ECG) is an important tool for monitoring abnormal heartbeats. Machine learning ha...
This paper develops a novel framework for feature extraction based on a combination of Linear Discri...
The paper deals with application of cluster analysis to different ECG records in order to identify p...
This thesis deals with methods of cluster analysis and their applications to short-term recording of...
This paper presents an investigation into the development of an efficient scheme to detect abnormal ...
In this paper, the performance analysis of a clustering algorithm applied to group electrocardiograp...
Automatic classification of electrocardiogram (ECG) signals is of paramount importance in the detect...
A study of computerised interpretation of the electrocardiogram (ECG) with the main focus on the pre...
The abnormalities of human heart are usually diagnosed from a biological signal known as the Electro...
Automatic interpretation of electrocardiography provides a non-invasive and inexpensive technique to...
Cardiovascular diseases are one of the main causes of death around the world. Automatic classificati...
Holter electrocardiographic (ECG) signals are ambulatory long-term registers used to detect heart di...
In this study, six types of arrhythmia beats observed in ECG signals have been analysed by using clu...
Introduction. The most common method for diagnosing cardiovascular diseases is the method of ECG mon...
This Paper describes a clustering approach to be used for incoming data under computional constraint...
Electrocardiogram (ECG) is an important tool for monitoring abnormal heartbeats. Machine learning ha...