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ECG data optimization for biometric human recognition using statistical distributed machine learning algorithm

机译:使用统计分布式机器学习算法的生物特征识别的ECG数据优化

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摘要

Currently, security plays a crucial role in military, forensic and other industry applications. Traditional biometric authentication methods such as fingerprint, voice, face, iris and signature may not meet the demand for higher security. At present, the utility of biological signals in the area of security became popular. ECG signal is getting wide attention to use it as a tool for biometric recognition in authentication applications. ECG signals can provide more accurate biometrics for personal identity recognition. In machine learning, over-fitting is one of the major problems when working with a large data set of features so that an effective statistical technique is needed to control it. In this research, ECG signals are acquired from 20 individuals over 6 months in the MIT-BIH ECG-ID database. Altogether, a high-dimensional (N = 72) set of ECG features are extracted. These features are further fed to an algorithm, which reduces the feature space by classifying vital features and avoiding random, correlated and over-fitted features to increase the prediction accuracy. In this paper, a new intelligent statistical learning method, namely least absolute shrinkage and selection operator (LASSO), is proposed to select appropriate features for identification. The refined features thus obtained are trained with popular machine learning algorithms such as artificial neural networks, multi-class one-against-all support vector machine and K-nearest neighbour (K-NN). Finally, the performance of the proposed method with and without LASSO is compared using performance metrics. From the experimental results, it is observed that the proposed method of LASSO with K-NN classifier is effective with a recognition accuracy of 99.1379%.
机译:当前,安全性在军事,司法和其他行业应用中起着至关重要的作用。诸如指纹,语音,面部,虹膜和签名之类的传统生物特征认证方法可能无法满足对更高安全性的需求。目前,生物信号在安全领域中的应用变得流行。 ECG信号越来越受到人们的关注,将其用作身份验证应用中的生物识别工具。 ECG信号可以为个人身份识别提供更准确的生物统计信息。在机器学习中,过拟合是使用大量特征数据集时的主要问题之一,因此需要一种有效的统计技术来对其进行控制。在这项研究中,在MIT-BIH ECG-ID数据库中,在6个月内从20个人中获取了ECG信号。一共提取了高维(N = 72)的ECG特征集。这些特征还被馈送到一种算法,该算法通过对重要特征进行分类并避免随机,相关和过度拟合的特征来增加预测精度,从而减少了特征空间。本文提出了一种新的智能统计学习方法,即最小绝对收缩和选择算子(LASSO),以选择合适的特征进行识别。如此获得的精炼特征是通过流行的机器学习算法(例如人工神经网络,多类反对所有支持向量机和K最近邻(K-NN))进行训练的。最后,使用性能指标比较了使用和不使用LASSO时所提出方法的性能。从实验结果可以看出,所提出的带有K-NN分类器的LASSO方法是有效的,识别精度为99.1379%。

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