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基于 PCANet 的 EigenECG 网络方法用于从 ECG 信号中进行个人身份识别。

An EigenECG Network Approach Based on PCANet for Personal Identification from ECG Signal.

机构信息

Department of Control and Instrumentation Engineering, Chosun University, Gwangju 501759, Korea.

出版信息

Sensors (Basel). 2018 Nov 18;18(11):4024. doi: 10.3390/s18114024.

Abstract

We herein propose an EigenECG Network (EECGNet) based on the principal component analysis network (PCANet) for the personal identification of electrocardiogram (ECG) from human biosignal data. The EECGNet consists of three stages. In the first stage, ECG signals are preprocessed by normalization and spike removal. The R peak points in the preprocessed ECG signals are detected. Subsequently, ECG signals are transformed into two-dimensional images to use as the input to the EECGNet. Further, we perform patch-mean removal and PCA algorithm similar to the PCANet from the transformed two-dimensional images. The second stage is almost the same as the first stage, where the mean removal and PCA process are repeatedly performed in the cascaded network. In the final stage, the binary quantization, block sliding, and histogram computation are performed. Thus, this EECGNet performs well without the use of back-propagation to obtain features from the visual content. We constructed a Chosun University (CU)-ECG database from an ECG sensor implemented by ourselves. Further, we used the well-known MIT Beth Israel Hospital (BIH) ECG database. The experimental results clearly reveal the good performance and effectiveness of the proposed method compared with conventional algorithms such as PCA, auto-encoder (AE), extreme learning machine (ELM), and ensemble extreme learning machine (EELM).

摘要

我们在此提出了一种基于主成分分析网络(PCANet)的 EigenECG 网络(EECGNet),用于从人体生物信号数据中进行心电图(ECG)的个人识别。EECGNet 由三个阶段组成。在第一阶段,通过归一化和去除尖峰对 ECG 信号进行预处理。检测预处理 ECG 信号中的 R 波峰点。随后,将 ECG 信号转换为二维图像,作为 EECGNet 的输入。此外,我们从转换后的二维图像中执行类似于 PCANet 的补丁均值去除和 PCA 算法。第二阶段与第一阶段几乎相同,其中在级联网络中反复执行均值去除和 PCA 过程。在最后阶段,执行二进制量化、块滑动和直方图计算。因此,这种 EECGNet 无需使用反向传播即可从视觉内容中获取特征,从而表现良好。我们从我们自己实现的 ECG 传感器构建了一个朝鲜大学(CU)-ECG 数据库。此外,我们还使用了著名的麻省理工学院贝斯以色列医院(BIH)ECG 数据库。实验结果清楚地表明,与 PCA、自编码器(AE)、极限学习机(ELM)和集成极限学习机(EELM)等传统算法相比,所提出的方法具有更好的性能和有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/39ed/6263947/19ec75ec237c/sensors-18-04024-g001.jpg

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