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Design an Intelligent Ballistocardiographic Chair using Novel QuickLearn and SF-ART Algorithms and Biorthogonal Wavelets

机译:使用新颖的QuickLearn和SF-ART算法以及双正交小波设计智能型心动描记器

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To design a heart diseases diagnosing system, we applied compactly supported Biorthogonal wavelet transform to extract essential features of the Ballistocardiogram (BCG) signal and to classify them using two novel supervised learning algorithms called SF-ART and QuickLearn. Initial tests with BCG from six subjects (both healthy and unhealthy people) indicate that both SF-ART and Quicklearn algorithms can classify the subjects into three classes with high accuracies, high learning speeds, and very low computational loads compared to the well-known neural networks such as Multilayer Perceptrons. The proposed heart diseases diagnosing systems are almost insensitive to latency and nonlinear disturbance. Moreover, the wavelet transform requires no prior knowledge of the statistical distribution of data samples and the computational complexity and training time are reduced.
机译:为了设计心脏病诊断系统,我们应用了紧凑支持的Biorthogonal小波变换来提取心搏描记图(BCG)信号的基本特征,并使用两种新型的有监督学习算法SF-ART和QuickLearn对它们进行分类。对来自六个受试者(健康人和不健康人)的BCG进行的初步测试表明,与众所周知的神经网络相比,SF-ART和Quicklearn算法都可以将受试者分为三类,具有较高的准确性,较高的学习速度和非常低的计算量网络,例如多层感知器。所提出的心脏病诊断系统几乎对潜伏期和非线性干扰不敏感。此外,小波变换不需要数据样本的统计分布的先验知识,并且减少了计算复杂度和训练时间。

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