期刊
出版社
IEEE
DOI: 10.1109/IDAACS.2009.5342942
关键词
ECG personal identification; neural networks; PCA; LDA; HMM
In this paper an approach for personal biometric identification is presented based on extraction of ECG features and classification with RBFNN. We perform denoising and segmentation on the input signal, after which we realize dimensionality reduction and feature extraction based on PCA transform. The separability of the selected features is improved by applying LDA. The final stage of the proposed approach is classification and recognition of the extracted features with classifier score fusion.
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