Title
A Study of Deep Feature Fusion based Methods for Classifying Multi-lead ECG.
Abstract
An automatic classification method has been studied to effectively detect and recognize Electrocardiogram (ECG). Based on the synchronizing and orthogonal relationships of multiple leads, we propose a Multi-branch Convolution and Residual Network (MBCRNet) with three kinds of feature fusion methods for automatic detection of normal and abnormal ECG signals. Experiments are conducted on the Chinese Cardiovascular Disease Database (CCDD). Through 10-fold cross-validation, we achieve an average accuracy of 87.04% and a sensitivity of 89.93%, which outperforms previous methods under the same database. It is also shown that the multi-lead feature fusion network can improve the classification accuracy over the network only with the single lead features.
Year
Venue
Field
2018
arXiv: Computer Vision and Pattern Recognition
Residual,Feature fusion,Pattern recognition,Convolution,Computer science,Synchronizing,Abnormal ECG,Artificial intelligence
DocType
Volume
Citations 
Journal
abs/1808.01721
0
PageRank 
References 
Authors
0.34
0
7
Name
Order
Citations
PageRank
Bin Chen14710.53
Wei Guo2442146.38
Bin Li36827.40
robert k f teng400.68
Mingjun Dai511916.32
Jianping Luo661.22
Hui Wang717535.62