An efficient clustering-based non-fiducial approach for ECG biometric recognition

David Meltzer, D. Luengo
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Abstract

Recognition of individuals through different bio-metric traits is becoming increasingly important. Apart from traditional biomarkers (like fingerprints), many alternative traits have been proposed during the last two decades: ECG and EEG signals, iris or facial recognition, behavioral traits, etc. Several works have shown that ECG-based recognition is a feasible alternative for either stand-alone or multibiometric recognition systems. In this paper, we propose a novel, efficient and scalable clustering-based method for ECG biometric recognition. First of all, fixed length segments of the ECG are extracted without the need of computing any fiducial points. Unique traits for each subject are then obtained by computing the autocorrelation (AC) of each segment, followed by the discrete cosine transform (DCT) to compress the available information. Finally, hierarchical ag-glomerative clustering (HAC) is applied to generate the groups that will be used later on for classification. The combination of the DCT to reduce the feature dimensionality and the HAC to decrease the number of features required by the classifier results in an efficient method both from the memory storage and computational point of view. Furthermore, the proposed AC/DCT-HAC (ADH) approach is robust, since no fiducial points (which may be difficult to extract reliably) are required, scalable and attains a better performance than other approaches with higher storage/computational cost.
一种有效的基于聚类的心电生物特征识别非基准方法
通过不同的生物特征来识别个体变得越来越重要。除了传统的生物标记(如指纹),在过去的二十年里,许多替代特征被提出:心电图和脑电图信号,虹膜或面部识别,行为特征等。一些工作表明,基于脑电图的识别是独立或多生物识别系统的可行替代方案。本文提出了一种新颖、高效、可扩展的基于聚类的心电生物特征识别方法。首先,在不计算任何基点的情况下提取心电固定长度的片段。然后通过计算每个片段的自相关(AC)来获得每个主题的独特特征,然后通过离散余弦变换(DCT)来压缩可用信息。最后,应用分层聚类(HAC)来生成稍后将用于分类的组。结合DCT来降低特征维数和HAC来减少分类器所需的特征数量,从内存存储和计算的角度来看都是一种有效的方法。此外,所提出的AC/DCT-HAC (ADH)方法具有鲁棒性,因为不需要基准点(可能难以可靠地提取),具有可扩展性,并且比其他具有更高存储/计算成本的方法具有更好的性能。
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