DSpace
 

EMU I-REP >
02 Faculty of Engineering >
Department of Computer Engineering >
Theses (Master's and Ph.D) – Computer Engineering >

Please use this identifier to cite or link to this item: http://hdl.handle.net/11129/5560

Title: Fusion of Multi-stage CNN Features for ECG Classification
Authors: Acan, Adnan
Golrizkhatami, Zahra
Enter Author's Faculty / Department. Example: Eastern Mediterranean University, Faculty of Engineering, Department of Computer Engineering
Keywords: Computer Engineering Department
Artificial Intelligence
Electrocardiogram, convolutional neural networks, directed acyclic graph CNN, morphological feature, statistical feature, temporal features, multi-stage CNN based features, feature-level fusion, score-level fusion, decision-level fusio
Issue Date: Dec-2018
Publisher: Eastern Mediterranean University (EMU) - Doğu Akdeniz Üniversitesi (DAÜ)
Citation: Golrizkhatami, Zahra. (2018). Fusion of Multi-stage CNN Features for ECG Classification. Thesis (Ph.D.), Eastern Mediterranean University, Institute of Graduate Studies and Research, Dept. of Computer Engineering, Famagusta: North Cyprus.
Abstract: ABSTRACT: Detecting and classifying cardiac arrhythmias is critical to the diagnosis of patients with cardiac abnormalities. Identification and classification of abnormalities are time consuming because it often requires analysing each heartbeat of the ECG recording. Moreover, computerized ECG classification can also be very useful in shortening hospital waiting lists and saving the life by discovering heart diseases at early stages. Therefore, automatic classification of the arrhythmias using machine-learning technologies can bring various benefits. In this thesis, novel and high-performance approaches based on deep learning techniques are proposed for the automatic classification of electrocardiogram (ECG) signals. In this research work, two fully automatic systems have been presented which are shown to have high efficiency and low computational cost. In one of the proposed systems, a novel decision-level fusion of features is presented by three different approaches; the first one uses normalized feature-level fusion of handcrafted global statistical and local temporal features by uniting these features into one set, the second one uses the morphological feature subset, and the third one combines features extracted from multiple layers of a Convolutional Neural Network (CNN) through using a score-level based refinement procedure. The second proposed system utilized a new architecture of deep neural networks, Directed Acyclic Graph Convolutional Neural Networks (DAG-CNNs). DAG-CNNs fuse the feature extraction and classification stages of the ECG classification into a single automated learning procedure and utilize the multi-scale features and perform the score-level fusion of multiple classifiers automatically. The results over the MIT-BIH arrhythmia benchmark database exhibited that the proposed systems achieve superior classification accuracy compared to all of the state-of-the-art ECG classification methods. Keywords: electrocardiogram, convolutional neural networks, directed acyclic graph CNN, morphological feature, statistical feature, temporal features, multi-stage CNN-based features, feature-level fusion, score-level fusion, decision-level fusion
Description: Doctor of Philosophy in Computer Engineering. Thesis (Ph.D.)--Eastern Mediterranean University, Faculty of Engineering, Dept. of Computer Engineering, 2018. Supervisor: Assoc. Prof. Dr. Adnan Acan.
URI: http://hdl.handle.net/11129/5560
Appears in Collections:Theses (Master's and Ph.D) – Computer Engineering

Files in This Item:

File Description SizeFormat
Zahra Golrizkhatami Ph.D..pdfThesis, Doctoral2.9 MBAdobe PDFView/Open


This item is protected by original copyright

Recommend this item
View Statistics

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

 

Valid XHTML 1.0! DSpace Software Copyright © 2002-2010  Duraspace - Feedback