Over the course of the past two decades, a substantial body of research has substantiated the viability of utilising cardiac signals as a biometric modality. This paper presents a novel approach for patient identification in healthcare systems using electrocardiogram signals. A convolutional neural network is used to classify users based on images extracted from ECG signals. The proposed identification system is evaluated in multiple databases, providing a comprehensive understanding of its potential in real-world scenarios. The impact of Cardiovascular Diseases on generic user identification has been largely overlooked in previous studies. The presented method takes into account the cardiovascular condition of the patients, ensuring that the results obtained are not biased or limited. Furthermore, the results obtained are consistent and reliable, with lower error rates and higher accuracy metrics, as demonstrated through extensive experimentation. All these features make the proposed method a valuable contribution to the field of patient identification in healthcare systems, and make it a strong contender for practical applications.
翻译:在过去二十年中,大量研究证实了使用心脏信号作为一种生物鉴别方法的可行性,本文件介绍了在保健系统中使用心电图信号进行病人识别的新办法;利用神经神经网络根据ECG信号的图像对用户进行分级;在多个数据库中评价了拟议的识别系统,全面了解该系统在现实世界情景中的潜力;以前的研究基本上忽视了心血管疾病对一般用户识别的影响;提出的方法考虑到病人的心血管状况,确保获得的结果没有偏差或限制;此外,通过广泛的实验,所取得的结果是一致和可靠的,差错率较低,准确度指标更高;所有这些特征都使拟议的方法对保健系统中病人识别领域作出宝贵贡献,成为实际应用的有力竞争者。