基于神经网络的心电分类器在TMS320C6711处理器上的实现

R. Thakare, N. Charniya
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引用次数: 2

摘要

提出了一种基于多层感知器神经网络(MLP NN)的近最优心电图分类器的实现方法。在本研究中,设计并实现了一种优化的基于MLP神经网络的心电正常与异常检测分类器。利用数字信号处理工具提取心电信号的主要特征,对MLP神经网络模型进行优化。为此,采用MLP神经网络在最小网络维数约束下实现精度最大化,使得其硬件实现进一步需要最小的组件数来满足实时约束和低功耗。在不同的数据分区上重复进行多次模拟实验后,发现MLP神经网络的分类精度仍然很好。所设计的MLP神经网络已在TMS320C6711处理器上实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Neural Networks Based ECG classifi'er on TMS320C6711 processor
This paper presents the implementation of near optimal electrocardiogram (ECG) classifier based on multilayer perceptron neural networks (MLP NN). In the present investigations the optimized MLP NN based classifier is designed and implemented for detection of normal and abnormal ECG. Some dominant unique features of ECG are extracted using digital signal processing tools to optimize the MLP NN model. For this, MLP NN network is used to maximize accuracy under the constraints of minimum network dimension so that its hardware implementation further requires minimum number of components to satisfy real time constraints and low power consumption. The classification accuracy of MLP NN is found very good even after repeating the simulation experiments a number of times on different data partitions. The MLP NN thus designed has been implemented on the TMS320C6711 processor.
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