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A comparative analysis of QRS and Cardioid Graph Based ECG Biometric Recognition in different Physiological conditions

机译:基于QRS和心电图图的ECG生物识别在不同生理条件下的比较分析

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This paper performs a comparative analysis of QRS and Cardioid Graph Based ECG Biometric Recognition incorporating Physiological variability. Data was acquired from 30 subjects, where each subject performed six types of physical activities namely walking, going upstairs, going downstairs, natural gait, lying with position changed and resting while watching TV. Then from the signals of these physiological conditions specific features exclusive to each subject were extracted employing the Cardioid graph based model. In this model, features were extracted solely from the graph derived of the QRS complexes. Subjects were recognized with Multilayer Perceptron classification algorithm. Results were obtained through two approaches. Classification was performed on the whole dataset, Cardioid graph based method resulted in 96.4% of correctly classified instances, whereas QRS complex based ECG produced 94.7% accuracy rates. Later, sensitivity and specificity analysis was done to determine the robustness of the model which produced higher outcomes for Cardioid graph based technique of 96.4% and 99.9% respectively. These results suggest that subject identification in different physiological conditions with Cardioid graph based technique produces better classification rates than that of employing only QRS complexes.
机译:本文对基于ECG生物识别的QRS和心拓图进行了比较分析,包括生理变异性。数据是从30个科目获得的,每个主题都执行了六种类型的体育活动即步行,楼上,楼下,自然步态,躺在看电视时的位置改变和休息。然后从这些生理条件的信号中提取来自每个受试者的特异性特征,采用基于心外线图的模型。在该模型中,仅来自QRS复合物的图表中的图表提取了特征。通过多层的感知分类算法识别受试者。结果通过两种方法获得。对整个数据集进行分类,基于CarkioID图的方法导致了96.4%的正确甲型,而基于QRS基于ECG的精度率产生了94.7%。后来,进行敏感性和特异性分析以确定模型的稳健性,该模型为基于型技术的基于型技术产生了96.4%和99.9%的培养。这些结果表明,基于CardioID图的技术的不同生理条件中的主题鉴定产生比仅使用QRS复合物的更好的分类率。

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