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- Title
改进胶囊网络优化分层卷积的亚健康识别算法.
- Authors
张利; 邱存月; 张凯鑫; 张大波; 罗浩
- Abstract
Aiming at the problem that traditional convolutional neural network (CNN) continuously stacks convolutional layers and pooling layers in order to obtain high accuracy, resulting in complicated model structure, long training time, and single data processing method, a optimized layered convolutional sub-health recognition algorithm of improved capsule network is proposed. Firstly, the original vibration data are transformed by wavelet denoising and wavelet packet denoising to better retain the useful information in the original signal for sub-health recognition. Secondly, CNN adopts the idea of layered convolution, parallelizes three convolution kernels of different scales, and carries on multi-angle feature extraction. Finally, the features extracted by the convolution kernels are input into the improved capsule network with pruning strategy for sub-health recognition. The improved capsule network can not only guarantee the accuracy, but also accelerate the sub-health recognition time, thus the problems of too complicated CNN structure and poor recognition effect are solved. Experimental results show that the proposed algorithm has high recognition accuracy and less recognition time.
- Publication
Journal of Frontiers of Computer Science & Technology, 2021, Vol 15, Issue 4, p712
- ISSN
1673-9418
- Publication type
Article
- DOI
10.3778/j.issn.1673-9418.2004017