IEEE J Biomed Health Inform. 2016 Mar;20(2):460-8. doi: 10.1109/JBHI.2015.2402199. Epub 2015 Feb 10.
Traditional biometric recognition systems often utilize physiological traits such as fingerprint, face, iris, etc. Recent years have seen a growing interest in electrocardiogram (ECG)-based biometric recognition techniques, especially in the field of clinical medicine. In existing ECG-based biometric recognition methods, feature extraction and classifier design are usually performed separately. In this paper, a multitask learning approach is proposed, in which feature extraction and classifier design are carried out simultaneously. Weights are assigned to the features within the kernel of each task. We decompose the matrix consisting of all the feature weights into sparse and low-rank components. The sparse component determines the features that are relevant to identify each individual, and the low-rank component determines the common feature subspace that is relevant to identify all the subjects. A fast optimization algorithm is developed, which requires only the first-order information. The performance of the proposed approach is demonstrated through experiments using the MIT-BIH Normal Sinus Rhythm database.
传统的生物识别系统通常利用生理特征,如指纹、人脸、虹膜等。近年来,基于心电图(ECG)的生物识别技术越来越受到关注,特别是在临床医学领域。在现有的基于 ECG 的生物识别方法中,特征提取和分类器设计通常是分开进行的。在本文中,提出了一种多任务学习方法,其中特征提取和分类器设计同时进行。我们为每个任务的核内的特征分配权重。我们将包含所有特征权重的矩阵分解为稀疏和低秩分量。稀疏分量确定与识别每个人相关的特征,而低秩分量确定与识别所有受试者相关的公共特征子空间。开发了一种仅需要一阶信息的快速优化算法。通过使用麻省理工学院-贝斯以色列医院正常窦性节律数据库进行的实验,验证了所提出方法的性能。