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An Intelligent Ballistocardiographic Chair using a Novel SF-ART Neural Network and Biorthogonal Wavelets

机译:使用新型SF-ART神经网络和双正交小波的智能心包描记器

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This paper presents a comparative analysis of novel supervised fuzzy adaptive resonance theory (SF-ART), multilayer perceptron (MLP) and Multi Layer Perceptrons (MLP) neural networks over Ballistocardiogram (BCG) signal recognition. To extract essential features of the BCG signal, we applied Biorthogonal wavelets. SF-ART performs classification on two levels. At first level, pre-classifier which is self-organized fuzzy ART tuned for fast learning classifies the input data roughly to arbitrary (M) classes. At the second level, post-classification level, a special array called Affine Look-up Table (ALT) with M elements stores the labels of corresponding input samples in the address equal to the index of fuzzy ART winner. However, in running (testing) mode, the content of an ALT cell with address equal to the index of fuzzy ART winner output will be read. The read value declares the final class that input data belongs to. In this paper, we used two well-known patterns (IRIS and Vowel data) and a medical application (Ballistocardiogram data) to evaluate and check SF-ART stability, reliability, learning speed and computational load. Initial tests with BCG from six subjects (both healthy and unhealthy people) indicate that the SF-ART is capable to perform with a high classification performance, high learning speed (elapsed time for learning around half second), and very low computational load compared to the well-known neural networks such as MLP which needs minutes to learn the training material. Moreover, to extract essential features of the BCG signal, we applied Biorthogonal wavelets. The applied wavelet transform requires no prior knowledge of the statistical distribution of data samples.
机译:本文对心电图(BCG)信号识别上的新型监督模糊自适应共振理论(SF-ART),多层感知器(MLP)和多层感知器(MLP)神经网络进行了比较分析。为了提取BCG信号的基本特征,我们应用了双正交小波。 SF-ART在两个级别上执行分类。在第一级,为快速学习而调整的自组织模糊ART的预分类器将输入数据大致分类为任意(M)类。在第二级,即分类后级别,具有M个元素的称为仿射查找表(ALT)的特殊数组将对应的输入样本的标签存储在与模糊ART获胜者索引相等的地址中。但是,在运行(测试)模式下,将读取地址等于模糊ART获胜者输出的索引的ALT单元的内容。读取的值声明输入数据所属的最终类。在本文中,我们使用了两种著名的模式(IRIS和Vowel数据)和医疗应用(心电图数据)来评估和检查SF-ART的稳定性,可靠性,学习速度和计算量。与六名受试者(健康人和不健康人)进行的BCG初步测试表明,与相比,SF-ART具有较高的分类性能,较高的学习速度(学习时间约半秒)和非常低的计算量诸如MLP之类的著名神经网络需要几分钟来学习培训材料。此外,为了提取BCG信号的基本特征,我们应用了双正交小波。所应用的小波变换不需要数据样本的统计分布的先验知识。

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