Pulse Wave Recognition Using Deep Hybrid Neural Networks Based on GoogLeNet and ResNet
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    Abstract:

    To improve the accuracy of pulse wave recognition, MIRNet2 is proposed, which is a kind of modified deep hybrid neural networks. Firstly, processable data sets of Caffe are obtained by main pulse extraction, segmenting cycle and making hdf5 data sets. Secondly, deep hybrid neural networks are designed. Inception-ResNet (IRNet) is consisted of inception modules and residual modules, containing IRNet1, IRNet2 and IRNet3. Subsequently, Modified Inception-ResNet (MIRNet) composed of modified Inception modules, residual modules and pooling modules (or reduction modules) is proposed, including MIRNet1 and MIRNet2. Compared with other neural networks in the study, MIRNet2 is the best one, with the specificity of 87.85%, the sensitivity of 88.05% and the accuracy of 87.84%, respectively. In addition, parameters and operations of MIRNet2 are also less than that of IRNet3.

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张选,胡晓娟.基于GoogLeNet和ResNet的深度融合神经网络在脉搏波识别中的应用.计算机系统应用,2019,28(10):15-26

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History
  • Received:March 20,2019
  • Revised:April 17,2019
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  • Online: October 15,2019
  • Published: October 15,2019
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