Institute of Computer Science, Romanian Academy, 700481 Iasi, Romania.
Faculty of Electronics, Telecomunications & Information Technology, Gheorghe Asachi Technical University of Iasi, 700050 Iasi, Romania.
Biosensors (Basel). 2022 Feb 27;12(3):146. doi: 10.3390/bios12030146.
The paper proposes a comparative analysis of the projection matrices and dictionaries used for compressive sensing (CS) of electrocardiographic signals (ECG), highlighting the compromises between the complexity of preprocessing and the accuracy of reconstruction. Starting from the basic notions of CS theory, this paper proposes the construction of dictionaries (constructed directly by cardiac patterns with R-waves, centered or not-centered) specific to the application and the results of their testing. Several types of projection matrices are also analyzed and discussed. The reconstructed signals are analyzed quantitatively and qualitatively by standard distortion measures and by the classification of the reconstructed signals. We used a k-nearest neighbors (KNN) classifier to evaluate the reconstructed models. The KNN module was trained with the models from the mega-dictionary used in the classification block and tested with the models reconstructed with class-specific dictionaries. In addition to the KNN classifier, a neural network was used to test the reconstructed signals. The neural network was a multilayer perceptron (MLP). Moreover, the results are compared with those obtained with other compression methods, and ours proved to be superior.
本文提出了一种用于心电图信号(ECG)压缩感知(CS)的投影矩阵和字典的比较分析,重点讨论了预处理复杂性和重建准确性之间的权衡。本文从 CS 理论的基本概念出发,提出了特定于应用的字典(由带 R 波的心脏模式直接构建,是否中心化)的构建,并对其进行了测试。还分析和讨论了几种类型的投影矩阵。通过标准失真度量和重建信号的分类对重建信号进行定量和定性分析。我们使用 k-最近邻(KNN)分类器来评估重建模型。KNN 模块使用分类块中使用的 mega 字典中的模型进行训练,并使用特定于类的字典重建的模型进行测试。除了 KNN 分类器之外,还使用神经网络来测试重建信号。神经网络是多层感知器(MLP)。此外,还将结果与其他压缩方法的结果进行了比较,结果表明我们的方法更优。