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Cardiac Murmur Effects on Automatic Segmentation of ECG Signals for Biometric Identification: Preliminary Study

机译:心脏杂音对用于生物识别的ECG信号自动分段的影响:初步研究

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Biometric identification or authentication is a pattern recognition process, which is carried out acquiring different measures of human beings to distinguish them. Fingerprint and eye iris are the most known and used biometric techniques; nevertheless, also they are the most vulnerable to counterfeiting. Consequently, nowadays research has been focused on physiological signals and behavioral traits for biometric identification because these allow not only the authentication but also determine that the subject is alive. Electrocardiographic signals (ECG-S) have been studied for biometric identification demonstrating their capability. Taking into account that some pathologies are detected using ECG-S, these can affect the results of biometric identification; nonetheless, some diseases such as cardiac murmurs are not detected by ECG-S, but they can distort their morphology. Therefore, these signals must be analyzed considering different pathologies. In this paper, a biometric study was carried out from 40 subjects (20 with cardiac murmurs and 20 without cardiac affections). First, the ECG-S were preprocessed and segmented using the fast method for detecting T waves with annotation of P and T waves, then feature extraction was carried out using discrete wavelet transform (DWT), maximal overlap DWT, cepstral coefficients, and statistical measures. Then, rough set and relief F algorithms were applied to datasets (pathological and normal signals) for attribute reduction. Finally, multiple classifiers and combinations of them were tested. The results of the segmentation were analyzed achieving low results for signals affected by cardiac murmurs. On the other hand, according to the cardiac murmur effects analyzed, the performance of the classifiers in cascade shown the best accuracy for human identification from ECG-S, minimizing the impact of variability generated on ECG-S by cardiac murmurs diseases.
机译:生物特征识别或认证是一种模式识别过程,该过程是通过获取人类的不同度量来进行区分的。指纹和眼虹膜是最著名和最常用的生物特征识别技术。但是,它们也是最容易造假的地方。因此,当今的研究集中在用于生物特征识别的生理信号和行为特征上,因为这些特征和行为特征不仅可以进行身份​​验证,还可以确定对象是否还活着。已经对心电图信号(ECG-S)进行了生物特征识别研究,证明了其功能。考虑到使用ECG-S检测到某些病理,这些会影响生物特征识别的结果;但是,ECG-S不能检测到某些疾病,例如心脏杂音,但会扭曲其形态。因此,必须考虑不同的病理来分析这些信号。在本文中,对40位受试者(20位有心脏杂音而20位没有心脏情感)进行了生物特征识别研究。首先,使用快速方法对ECG-S进行预处理和分段,并用P和T波标注来检测T波,然后使用离散小波变换(DWT),最大重叠DWT,倒频谱系数和统计量度进行特征提取。然后,将粗糙集和救济F算法应用于数据集(病理和正常信号)以进行属性约简。最后,测试了多个分类器及其组合。分析了分割的结果,对于受心脏杂音影响的信号,其结果较低。另一方面,根据所分析的心脏杂音效应,级联分类器的性能显示出从ECG-S进行人体识别的最佳准确性,从而最大程度地减少了心脏杂音疾病对ECG-S产生的变异性的影响。

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