TY - JOUR
T1 - Research and Implementation of ECG-Based Biological Recognition Parallelization
AU - Miao, Yiming
AU - Tian, Yuanwen
AU - Peng, Limei
AU - Shamim Hossain, M.
AU - Muhammad, Ghulam
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2017/11/8
Y1 - 2017/11/8
N2 - Nowadays, biological recognition technologies attract more attention in electrocardiograph (ECG) signals, which vary among different people and are difficult to counterfeit. However, the robustness of recognition cannot be well sustained in the case of diversified application scenarios and huge human crowds. In order to tackle this problem, this paper puts forward a fiducial and non-fiducial mixed feature extraction method, which can effectively complete the multidimensional feature modeling of ECG signal. In addition, this paper proposes a linear discriminant analysis (LDA) based on multiple features (LOMF) algorithm based on ECG mixed feature to solve time-overhead problem of big data training. LOMF includes ECG signal preprocessing, sub-block division, and block training. By combining the MapReduce distributed computing framework and the secondary retrieval method based on the multi-dimensional feature space, LOMF is parallelized to improve recognition rate and computing efficiency at the same time. The experiment results show that, in the diversified scenarios, utilizing ECG mixed feature can return a higher recognition rate than the traditional ECG 1-D feature. Moreover, compared with the traditional LDA and support vector machine algorithms, the precision of LOMF increases by 7%-8%, which depends on the most competitive advantage of using LOMF. LOMF fits MapReduce parallel framework well so it is more effective than traditional algorithms, especially on diversified application scenarios (such as Internet) where the amount of data grows rapidly.
AB - Nowadays, biological recognition technologies attract more attention in electrocardiograph (ECG) signals, which vary among different people and are difficult to counterfeit. However, the robustness of recognition cannot be well sustained in the case of diversified application scenarios and huge human crowds. In order to tackle this problem, this paper puts forward a fiducial and non-fiducial mixed feature extraction method, which can effectively complete the multidimensional feature modeling of ECG signal. In addition, this paper proposes a linear discriminant analysis (LDA) based on multiple features (LOMF) algorithm based on ECG mixed feature to solve time-overhead problem of big data training. LOMF includes ECG signal preprocessing, sub-block division, and block training. By combining the MapReduce distributed computing framework and the secondary retrieval method based on the multi-dimensional feature space, LOMF is parallelized to improve recognition rate and computing efficiency at the same time. The experiment results show that, in the diversified scenarios, utilizing ECG mixed feature can return a higher recognition rate than the traditional ECG 1-D feature. Moreover, compared with the traditional LDA and support vector machine algorithms, the precision of LOMF increases by 7%-8%, which depends on the most competitive advantage of using LOMF. LOMF fits MapReduce parallel framework well so it is more effective than traditional algorithms, especially on diversified application scenarios (such as Internet) where the amount of data grows rapidly.
KW - biological recognition
KW - ECG
KW - ECG mixed feature extraction
KW - LDA
KW - parallel computation
UR - http://www.scopus.com/inward/record.url?scp=85034215584&partnerID=8YFLogxK
U2 - 10.1109/ACCESS.2017.2771220
DO - 10.1109/ACCESS.2017.2771220
M3 - Article
AN - SCOPUS:85034215584
SN - 2169-3536
VL - 6
SP - 4759
EP - 4766
JO - IEEE Access
JF - IEEE Access
ER -