Personal Identification Using an Ensemble Approach of 1D-LSTM and 2D-CNN with Electrocardiogram Signals
Yasir Musab Uçarat
- 04 Mar 2022
- Vol. 12, Iss: 5, pp 2692-2692
TL;DR: In this article , an ensemble of LSTM and convolutional neural network (CNN) was used to perform personal identification using ECG signals, which achieved a performance improvement of 1.06-3.75%.
read more
Abstract: Conventional personal identification methods (ID, password, authorization certificate, etc.) entail various issues, including forgery or loss. Technological advances and the diffusion across industries have enhanced convenience; however, privacy risks due to security attacks are increasing. Hence, personal identification based on biometrics such as the face, iris, fingerprints, and veins has been used widely. However, biometric information including faces and fingerprints is difficult to apply in industries requiring high-level security, owing to tampering or forgery risks and recognition errors. This paper proposes a personal identification technique based on an ensemble of long short-term memory (LSTM) and convolutional neural network (CNN) that uses electrocardiograms (ECGs). An ECG uses internal biometric information, representing the heart rate in signals using microcurrents and thereby including noises during measurements. This noise is removed using filters in a preprocessing step, and the signals are divided into cycles with respect to R-peaks for extracting features. LSTM is used to perform personal identification using ECG signals; 1D ECG signals are transformed into the time–frequency domain using STFT, scalogram, FSST, and WSST; and a 2D-CNN is used to perform personal identification. This ensemble of two models is used to attain higher performances than LSTM or 2D-CNN. Results reveal a performance improvement of 1.06–3.75%.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
ERDeR: The Combination of Statistical Shrinkage Methods and Ensemble Approaches to Improve the Performance of Deep Regression
Zari Farhadi,Mohammad-Reza Feizi-Derakhshi,Hossein Bevrani,Wonjoon Kim,Muhammad Fazal Ijaz +4 more
TL;DR: ERDeR model combines statistical shrinkage methods and ensemble approaches to improve the performance of deep regression. The model consists of three phases: base regressions, shrinkage methods, and ensemble phase. The results show that ERDeR model significantly reduces the error rate and increases the model accuracy.
3
Hybrid Deep Learning and Discrete Wavelet Transform-Based ECG Biometric Recognition for Arrhythmic Patients and Healthy Controls
Muhammad Shahzad Faisal,Muhammad Najam Dar,Monia Hamdi,Hela Elmannai,Atif Rizwan,Muhammad Abbas +5 more
TL;DR: In this article , a feature-level fusion of the discrete wavelet transform and a one-dimensional convolutional recurrent neural network (1D-CRNN) was proposed for ECG recognition, which achieved an accuracy of 80.64%, 98.81% and 99.62% for the ECG-ID, MIT-BIH and NSR-DB datasets.
BiTCAN: A emotion recognition network based on saliency in brain cognition
Yan Jun An,Shaohai Hu,Shuaiqi Liu,Bing Li +3 more
TL;DR: A new spatio-temporal convolutional attention network for emotion recognition named BiTCAN is constructed, which is superior to most existing emotion recognition algorithms.
1
CATM: A Multi-Feature-Based Cross-Scale Attentional Convolutional EEG Emotion Recognition Model
TL;DR: The experimental results show that the method proposed in this paper exhibits better results compared to other recent methods, and also achieves better results in few-channel experiments.
1
Deep Ensemble Learning for Fake Digital Image Detection: A Convolutional Neural Network-Based Approach
Gyana Ranjan Panigrah,Prabira Kumar Sethy,Surya Prasada Rao Borra,Nalini Kanta Barpanda,Santi Kumari Behera +4 more
References
Deep Residual Learning for Image Recognition
Kaiming He,Xiangyu Zhang,Shaoqing Ren,Jian Sun +3 more
- 27 Jun 2016
TL;DR: In this article, the authors proposed a residual learning framework to ease the training of networks that are substantially deeper than those used previously, which won the 1st place on the ILSVRC 2015 classification task.
ECG analysis: a new approach in human identification
TL;DR: Experiments show that it is possible to identify a person by features extracted from one lead only, and only three electrodes have to be attached on the person to be identified.
1K
ECG to identify individuals
TL;DR: The tests show that the extracted features are independent of sensor location, invariant to the individual's state of anxiety, and unique to an individual.
734
Fingerprint enhancement using STFT analysis
TL;DR: A new approach for fingerprint enhancement based on short time Fourier transform (STFT) Analysis is introduced and the algorithm simultaneously estimates all the intrinsic properties of the fingerprints such as the foreground region mask, local ridge orientation and local ridge frequency.
438
Deep-ECG: Convolutional Neural Networks for ECG biometric recognition
TL;DR: Deep-ECG extracts significant features from one or more leads using a deep CNN and compares biometric templates by computing simple and fast distance functions, obtaining remarkable accuracy for identification, verification and periodic re-authentication.
348